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Hierarchical Ensemble-Based Feature Selection for Time Series Forecasting

Published 26 Oct 2023 in cs.LG | (2310.17544v3)

Abstract: We introduce a novel ensemble approach for feature selection based on hierarchical stacking for non-stationarity and/or a limited number of samples with a large number of features. Our approach exploits the co-dependency between features using a hierarchical structure. Initially, a machine learning model is trained using a subset of features, and then the output of the model is updated using other algorithms in a hierarchical manner with the remaining features to minimize the target loss. This hierarchical structure allows for flexible depth and feature selection. By exploiting feature co-dependency hierarchically, our proposed approach overcomes the limitations of traditional feature selection methods and feature importance scores. The effectiveness of the approach is demonstrated on synthetic and well-known real-life datasets, providing significant scalable and stable performance improvements compared to the traditional methods and the state-of-the-art approaches. We also provide the source code of our approach to facilitate further research and replicability of our results.

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[\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbolon2019ensembles{APACrefauthors}Bolón-Canedo, V.\BCBT \BBA Alonso-Betanzos, A.  \APACrefYearMonthDay2019\BCnt2. \BBOQ\APACrefatitleEnsembles for Feature Selection: A Review and Future Trends Ensembles for feature selection: A review and future trends.\BBCQ \APACjournalVolNumPagesInformation Fusion521–12, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.11.008 \PrintBackRefs\CurrentBib Bolón-Canedo \BOthers. [\APACyear2014] \APACinsertmetastarbolon2014data{APACrefauthors}Bolón-Canedo, V., Sánchez-Maroño, N.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleData Classification Using an Ensemble of Filters Data classification using an ensemble of filters.\BBCQ \APACjournalVolNumPagesNeurocomputing13513–20, {APACrefDOI} https://doi.org/10.1016/j.neucom.2013.03.067 \PrintBackRefs\CurrentBib Box \BBA Jenkins [\APACyear1970] \APACinsertmetastarbox1970time{APACrefauthors}Box, G.E.P.\BCBT \BBA Jenkins, G.M.  \APACrefYear1970. \APACrefbtitleTime Series Analysis: Forecasting and Control Time series analysis: Forecasting and control. \APACaddressPublisherSan FranciscoHolden-Day. \PrintBackRefs\CurrentBib Breiman [\APACyear2001] \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbolon2014data{APACrefauthors}Bolón-Canedo, V., Sánchez-Maroño, N.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleData Classification Using an Ensemble of Filters Data classification using an ensemble of filters.\BBCQ \APACjournalVolNumPagesNeurocomputing13513–20, {APACrefDOI} https://doi.org/10.1016/j.neucom.2013.03.067 \PrintBackRefs\CurrentBib Box \BBA Jenkins [\APACyear1970] \APACinsertmetastarbox1970time{APACrefauthors}Box, G.E.P.\BCBT \BBA Jenkins, G.M.  \APACrefYear1970. \APACrefbtitleTime Series Analysis: Forecasting and Control Time series analysis: Forecasting and control. \APACaddressPublisherSan FranciscoHolden-Day. \PrintBackRefs\CurrentBib Breiman [\APACyear2001] \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbox1970time{APACrefauthors}Box, G.E.P.\BCBT \BBA Jenkins, G.M.  \APACrefYear1970. \APACrefbtitleTime Series Analysis: Forecasting and Control Time series analysis: Forecasting and control. \APACaddressPublisherSan FranciscoHolden-Day. \PrintBackRefs\CurrentBib Breiman [\APACyear2001] \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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[\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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[\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbolon2019ensembles{APACrefauthors}Bolón-Canedo, V.\BCBT \BBA Alonso-Betanzos, A.  \APACrefYearMonthDay2019\BCnt2. \BBOQ\APACrefatitleEnsembles for Feature Selection: A Review and Future Trends Ensembles for feature selection: A review and future trends.\BBCQ \APACjournalVolNumPagesInformation Fusion521–12, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.11.008 \PrintBackRefs\CurrentBib Bolón-Canedo \BOthers. [\APACyear2014] \APACinsertmetastarbolon2014data{APACrefauthors}Bolón-Canedo, V., Sánchez-Maroño, N.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleData Classification Using an Ensemble of Filters Data classification using an ensemble of filters.\BBCQ \APACjournalVolNumPagesNeurocomputing13513–20, {APACrefDOI} https://doi.org/10.1016/j.neucom.2013.03.067 \PrintBackRefs\CurrentBib Box \BBA Jenkins [\APACyear1970] \APACinsertmetastarbox1970time{APACrefauthors}Box, G.E.P.\BCBT \BBA Jenkins, G.M.  \APACrefYear1970. \APACrefbtitleTime Series Analysis: Forecasting and Control Time series analysis: Forecasting and control. \APACaddressPublisherSan FranciscoHolden-Day. \PrintBackRefs\CurrentBib Breiman [\APACyear2001] \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbolon2014data{APACrefauthors}Bolón-Canedo, V., Sánchez-Maroño, N.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleData Classification Using an Ensemble of Filters Data classification using an ensemble of filters.\BBCQ \APACjournalVolNumPagesNeurocomputing13513–20, {APACrefDOI} https://doi.org/10.1016/j.neucom.2013.03.067 \PrintBackRefs\CurrentBib Box \BBA Jenkins [\APACyear1970] \APACinsertmetastarbox1970time{APACrefauthors}Box, G.E.P.\BCBT \BBA Jenkins, G.M.  \APACrefYear1970. \APACrefbtitleTime Series Analysis: Forecasting and Control Time series analysis: Forecasting and control. \APACaddressPublisherSan FranciscoHolden-Day. \PrintBackRefs\CurrentBib Breiman [\APACyear2001] \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbox1970time{APACrefauthors}Box, G.E.P.\BCBT \BBA Jenkins, G.M.  \APACrefYear1970. \APACrefbtitleTime Series Analysis: Forecasting and Control Time series analysis: Forecasting and control. \APACaddressPublisherSan FranciscoHolden-Day. \PrintBackRefs\CurrentBib Breiman [\APACyear2001] \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. 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M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbolon2014data{APACrefauthors}Bolón-Canedo, V., Sánchez-Maroño, N.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2014. \BBOQ\APACrefatitleData Classification Using an Ensemble of Filters Data classification using an ensemble of filters.\BBCQ \APACjournalVolNumPagesNeurocomputing13513–20, {APACrefDOI} https://doi.org/10.1016/j.neucom.2013.03.067 \PrintBackRefs\CurrentBib Box \BBA Jenkins [\APACyear1970] \APACinsertmetastarbox1970time{APACrefauthors}Box, G.E.P.\BCBT \BBA Jenkins, G.M.  \APACrefYear1970. \APACrefbtitleTime Series Analysis: Forecasting and Control Time series analysis: Forecasting and control. \APACaddressPublisherSan FranciscoHolden-Day. \PrintBackRefs\CurrentBib Breiman [\APACyear2001] \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbox1970time{APACrefauthors}Box, G.E.P.\BCBT \BBA Jenkins, G.M.  \APACrefYear1970. \APACrefbtitleTime Series Analysis: Forecasting and Control Time series analysis: Forecasting and control. \APACaddressPublisherSan FranciscoHolden-Day. \PrintBackRefs\CurrentBib Breiman [\APACyear2001] \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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[\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbox1970time{APACrefauthors}Box, G.E.P.\BCBT \BBA Jenkins, G.M.  \APACrefYear1970. \APACrefbtitleTime Series Analysis: Forecasting and Control Time series analysis: Forecasting and control. \APACaddressPublisherSan FranciscoHolden-Day. \PrintBackRefs\CurrentBib Breiman [\APACyear2001] \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  5. \APACrefYear1970. \APACrefbtitleTime Series Analysis: Forecasting and Control Time series analysis: Forecasting and control. \APACaddressPublisherSan FranciscoHolden-Day. \PrintBackRefs\CurrentBib Breiman [\APACyear2001] \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  6. \APACinsertmetastarbreiman2001random{APACrefauthors}Breiman, L.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleRandom Forests Random forests.\BBCQ \APACjournalVolNumPagesMachine Learning455–32, {APACrefDOI} https://doi.org/10.1023/A:1010933404324 \PrintBackRefs\CurrentBib Cortes \BBA Vapnik [\APACyear1995] \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsupport_vector_networks{APACrefauthors}Cortes, C.\BCBT \BBA Vapnik, V.  \APACrefYearMonthDay1995. \BBOQ\APACrefatitleSupport Vector Networks Support vector networks.\BBCQ \APACjournalVolNumPagesMachine Learning20273-297, \PrintBackRefs\CurrentBib Das [\APACyear2001] \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. 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M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardas2001filters{APACrefauthors}Das, S.  \APACrefYearMonthDay2001. \BBOQ\APACrefatitleFilters, Wrappers and a Boosting-Based Hybrid for Feature Selection Filters, wrappers and a boosting-based hybrid for feature selection.\BBCQ \APACrefbtitleProceedings of the International Conference on Machine Learning. Proceedings of the international conference on machine learning. \APACaddressPublisherUSA. \PrintBackRefs\CurrentBib Dickey \BBA Fuller [\APACyear1979] \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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[\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. 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On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. 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[\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastardickey1979distribution{APACrefauthors}Dickey, D.A.\BCBT \BBA Fuller, W.A.  \APACrefYearMonthDay1979. \BBOQ\APACrefatitleDistribution of the estimators for autoregressive time series with a unit root Distribution of the estimators for autoregressive time series with a unit root.\BBCQ \APACjournalVolNumPagesJournal of the American Statistical Association74366a427–431, \PrintBackRefs\CurrentBib Du [\APACyear2019] \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. 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[\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  10. \APACinsertmetastarml_models_favoring_yt_relateds{APACrefauthors}Du, M.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleImproving LSTM Neural Networks for Better Short-Term Wind Power Predictions Improving lstm neural networks for better short-term wind power predictions.\BBCQ \APACrefbtitle2019 IEEE 2nd International Conference on Renewable Energy and Power Engineering (REPE) 2019 ieee 2nd international conference on renewable energy and power engineering (repe) (\BPG 105-109). \PrintBackRefs\CurrentBib Friedman [\APACyear1997] \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarfriedman1997bias{APACrefauthors}Friedman, J.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleOn Bias, Variance, 0/1—Loss, and the Curse-of-Dimensionality On bias, variance, 0/1—loss, and the curse-of-dimensionality.\BBCQ \APACjournalVolNumPagesData Mining and Knowledge Discovery155–77, {APACrefDOI} https://doi.org/10.1023/A:1009778005914 \PrintBackRefs\CurrentBib Fumagalli \BOthers. [\APACyear2023] \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. 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M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. 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[\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarFumagalli2022iPFI{APACrefauthors}Fumagalli, F., Muschalik, M., Hüllermeier, E.\BCBL Hammer, B.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. 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[\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  12. \APACrefYearMonthDay2023. \BBOQ\APACrefatitleIncremental Permutation Feature Importance (iPFI): Towards Online Explanations on Data Streams Incremental permutation feature importance (ipfi): Towards online explanations on data streams.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-023-06385-y \PrintBackRefs\CurrentBib Hancer [\APACyear2021] \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  13. \APACinsertmetastarHancer2021ImprovedEvolutionary{APACrefauthors}Hancer, E.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleAn improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme An improved evolutionary wrapper-filter feature selection approach with a new initialisation scheme.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefDOI} https://doi.org/10.1007/s10994-021-05990-z {APACrefURL} https://www.mendeley.com/catalogue/53f9ff12-9a2d-3032-94d7-188d3887570d/ \PrintBackRefs\CurrentBib Jenul \BOthers. [\APACyear2022] \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarJenul2021UBayFS{APACrefauthors}Jenul, A., Schrunner, S., Pilz, J.\BCBL Tomic, O.  \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  14. \APACrefYearMonthDay2022. \BBOQ\APACrefatitleA User-Guided Bayesian Framework for Ensemble Feature Selection in Life Science Applications (UBayFS) A user-guided bayesian framework for ensemble feature selection in life science applications (ubayfs).\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-022-06221-9 \PrintBackRefs\CurrentBib Ke \BOthers. [\APACyear2017] \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarke2017lightgbm{APACrefauthors}Ke, G., Meng, Q., Finley, T., Wang, T., Chen, W., Ma, W.\BDBLLiu, T\BHBIY.  \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  15. \APACrefYearMonthDay2017. \BBOQ\APACrefatitleLightGBM: a highly efficient gradient boosting decision tree Lightgbm: a highly efficient gradient boosting decision tree.\BBCQ \APACrefbtitleProceedings of the 31st International Conference on Neural Information Processing Systems Proceedings of the 31st international conference on neural information processing systems (\BPG 3149–3157). \APACaddressPublisherRed Hook, NY, USACurran Associates Inc. \PrintBackRefs\CurrentBib Kohavi \BBA John [\APACyear1997] \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarkohavi1997wrappers{APACrefauthors}Kohavi, R.\BCBT \BBA John, G.H.  \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  16. \APACrefYearMonthDay1997. \BBOQ\APACrefatitleWrappers for feature subset selection Wrappers for feature subset selection.\BBCQ \APACjournalVolNumPagesArtificial Intelligence971–2273–324, {APACrefDOI} https://doi.org/10.1016/s0004-3702(97)00043-x \PrintBackRefs\CurrentBib Lee \BOthers. [\APACyear2020] \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarwind{APACrefauthors}Lee, J., Wang, W., Harrou, F.\BCBL Sun, Y.  \APACrefYearMonthDay2020. \BBOQ\APACrefatitleWind Power Prediction Using Ensemble Learning-Based Models Wind power prediction using ensemble learning-based models.\BBCQ \APACjournalVolNumPagesIEEE Access861517-61527, {APACrefDOI} https://doi.org/10.1109/ACCESS.2020.2983234 \PrintBackRefs\CurrentBib Lim \BOthers. [\APACyear2021] \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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[\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_2{APACrefauthors}Lim, B., Arik, S.O., Loeff, N.\BCBL Pfister, T.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleTemporal Fusion Transformers for interpretable multi-horizon time series forecasting Temporal fusion transformers for interpretable multi-horizon time series forecasting.\BBCQ \APACjournalVolNumPagesInternational Journal of Forecasting3741748-1764, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.ijforecast.2021.03.012 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S0169207021000637 \PrintBackRefs\CurrentBib Lin \BOthers. [\APACyear2019] \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsymmetric_uncertainty{APACrefauthors}Lin, X., Li, C., Ren, W., Luo, X.\BCBL Qi, Y.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleA new feature selection method based on symmetrical uncertainty and interaction gain A new feature selection method based on symmetrical uncertainty and interaction gain.\BBCQ \APACjournalVolNumPagesComputational Biology and Chemistry83107149, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.compbiolchem.2019.107149 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1476927118303736 \PrintBackRefs\CurrentBib Natekin \BBA Knoll [\APACyear2013] \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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[\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. 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On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. 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[\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarnatekin2013gradient{APACrefauthors}Natekin, A.\BCBT \BBA Knoll, A.  \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  20. \APACrefYearMonthDay2013Dec.. \BBOQ\APACrefatitleGradient Boosting Machines, a tutorial Gradient boosting machines, a tutorial.\BBCQ \APACjournalVolNumPagesFrontiers in Neurorobotics7, {APACrefDOI} https://doi.org/10.3389/fnbot.2013.00021 \PrintBackRefs\CurrentBib Pearson [\APACyear1896] \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  21. \APACinsertmetastarpearson1896mathematical{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1896. \BBOQ\APACrefatitleMathematical Contributions to the Theory of Evolution. On a Form of Spurious Correlation Which May Arise When Indices Are Used in the Measurement of Organs Mathematical contributions to the theory of evolution. on a form of spurious correlation which may arise when indices are used in the measurement of organs.\BBCQ \APACjournalVolNumPagesProceedings of the Royal Society of London60489-498, \PrintBackRefs\CurrentBib Pearson [\APACyear1901] \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  22. \APACinsertmetastarpearson1901lines{APACrefauthors}Pearson, K.  \APACrefYearMonthDay1901. \BBOQ\APACrefatitleLIII. on lines and planes of closest fit to systems of points in space Liii. on lines and planes of closest fit to systems of points in space.\BBCQ \APACjournalVolNumPagesThe London, Edinburgh, and Dublin Philosophical Magazine and Journal of Science211559–572, {APACrefDOI} https://doi.org/10.1080/14786440109462720 \PrintBackRefs\CurrentBib Quinlan [\APACyear1986] \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  23. \APACinsertmetastarquinlan1986induction{APACrefauthors}Quinlan, J.R.  \APACrefYearMonthDay1986. \BBOQ\APACrefatitleInduction of decision trees Induction of decision trees.\BBCQ \APACjournalVolNumPagesMachine Learning181–106, {APACrefDOI} https://doi.org/10.1007/BF00116251 \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2008] \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2008robust{APACrefauthors}Saeys, Y., Abeel, T.\BCBL Van de Peer, Y.  \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  24. \APACrefYearMonthDay2008. \BBOQ\APACrefatitleRobust Feature Selection Using Ensemble Feature Selection Techniques Robust feature selection using ensemble feature selection techniques.\BBCQ \APACrefbtitleMachine Learning and Knowledge Discovery in Databases Machine learning and knowledge discovery in databases (\BPGS 313–325). \PrintBackRefs\CurrentBib Saeys \BOthers. [\APACyear2007] \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsaeys2007review{APACrefauthors}Saeys, Y., Inza, I.\BCBL Larrañaga, P.  \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  25. \APACrefYearMonthDay2007. \BBOQ\APACrefatitleA review of feature selection techniques in bioinformatics A review of feature selection techniques in bioinformatics.\BBCQ \APACjournalVolNumPagesBioinformatics23192507–2517, {APACrefDOI} https://doi.org/10.1093/bioinformatics/btm344 \PrintBackRefs\CurrentBib Sanz \BOthers. [\APACyear2018] \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsvm_rfe{APACrefauthors}Sanz, H., Valim, C., Vegas, E., Oller, J.\BCBL Reverter, F.  \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  26. \APACrefYearMonthDay201811. \BBOQ\APACrefatitleSVM-RFE: Selection and visualization of the most relevant features through non-linear kernels Svm-rfe: Selection and visualization of the most relevant features through non-linear kernels.\BBCQ \APACjournalVolNumPagesBMC Bioinformatics19, {APACrefDOI} https://doi.org/10.1186/s12859-018-2451-4 \PrintBackRefs\CurrentBib Seijo-Pardo \BOthers. [\APACyear2019] \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarseijo2019developing{APACrefauthors}Seijo-Pardo, B., Bolón-Canedo, V.\BCBL Alonso-Betanzos, A.  \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  27. \APACrefYearMonthDay2019. \BBOQ\APACrefatitleOn Developing an Automatic Threshold Applied to Feature Selection Ensembles On developing an automatic threshold applied to feature selection ensembles.\BBCQ \APACjournalVolNumPagesInformation Fusion45227–245, {APACrefDOI} https://doi.org/10.1016/j.inffus.2018.02.007 \PrintBackRefs\CurrentBib Tibshirani [\APACyear1996] \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  28. \APACinsertmetastartibshirani1996regression{APACrefauthors}Tibshirani, R.  \APACrefYearMonthDay1996January. \BBOQ\APACrefatitleRegression Shrinkage and Selection Via the Lasso Regression shrinkage and selection via the lasso.\BBCQ \APACjournalVolNumPagesJournal of the Royal Statistical Society: Series B (Methodological)581267–288, {APACrefDOI} https://doi.org/10.1111/j.2517-6161.1996.tb02080.x \PrintBackRefs\CurrentBib Urbanowicz \BOthers. [\APACyear2018] \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarrelief{APACrefauthors}Urbanowicz, R.J., Meeker, M., La Cava, W., Olson, R.S.\BCBL Moore, J.H.  \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  29. \APACrefYearMonthDay2018. \BBOQ\APACrefatitleRelief-based feature selection: Introduction and review Relief-based feature selection: Introduction and review.\BBCQ \APACjournalVolNumPagesJournal of Biomedical Informatics85189-203, {APACrefDOI} https://doi.org/https://doi.org/10.1016/j.jbi.2018.07.014 {APACrefURL} https://www.sciencedirect.com/science/article/pii/S1532046418301400 \PrintBackRefs\CurrentBib Verleysen \BBA François [\APACyear2005] \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarsome_other_curseofdim{APACrefauthors}Verleysen, M.\BCBT \BBA François, D.  \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  30. \APACrefYearMonthDay2005. \BBOQ\APACrefatitleThe Curse of Dimensionality in Data Mining and Time Series Prediction The curse of dimensionality in data mining and time series prediction.\BBCQ J. Cabestany, A. Prieto\BCBL \BBA F. Sandoval (\BEDS), \APACrefbtitleComputational Intelligence and Bioinspired Systems Computational intelligence and bioinspired systems (\BPGS 758–770). \APACaddressPublisherBerlin, HeidelbergSpringer Berlin Heidelberg. \PrintBackRefs\CurrentBib Yogesh [\APACyear2020] \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  31. \APACinsertmetastaryogeshm4{APACrefauthors}Yogesh, S.  \APACrefYearMonthDay2020. \APACrefbtitleM4 Forecasting Competition Dataset. M4 forecasting competition dataset. \APAChowpublishedKaggle. {APACrefURL} https://www.kaggle.com/datasets/yogesh94/m4-forecasting-competition-dataset \APACrefnoteAccessed on Apr. 1, 2023 \PrintBackRefs\CurrentBib Yu \BOthers. [\APACyear2023] \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarArik_1{APACrefauthors}Yu, Q.R., Wang, R., Arik, S.\BCBL Dong, Y.  \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  32. \APACrefYearMonthDay2023. \BBOQ\APACrefatitleKoopman Neural Forecaster for Time-series with Temporal Distribution Shifts Koopman neural forecaster for time-series with temporal distribution shifts.\BBCQ \APACrefbtitleProceedings of ICLR. Proceedings of iclr. \PrintBackRefs\CurrentBib Škrlj \BOthers. [\APACyear2021] \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib \APACinsertmetastarSkrlj2021ReliefE{APACrefauthors}Škrlj, B., Džeroski, S., Lavrač, N.\BCBL Petković, M.  \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib
  33. \APACrefYearMonthDay2021. \BBOQ\APACrefatitleReliefE: Feature Ranking in High-dimensional Spaces via Manifold Embeddings Reliefe: Feature ranking in high-dimensional spaces via manifold embeddings.\BBCQ \APACjournalVolNumPagesMachine Learning, {APACrefURL} https://doi.org/10.1007/s10994-021-05998-5 \PrintBackRefs\CurrentBib

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