Papers
Topics
Authors
Recent
Gemini 2.5 Flash
Gemini 2.5 Flash
110 tokens/sec
GPT-4o
56 tokens/sec
Gemini 2.5 Pro Pro
44 tokens/sec
o3 Pro
6 tokens/sec
GPT-4.1 Pro
47 tokens/sec
DeepSeek R1 via Azure Pro
28 tokens/sec
2000 character limit reached

A Survey on Causal Discovery Methods for I.I.D. and Time Series Data (2303.15027v4)

Published 27 Mar 2023 in cs.AI

Abstract: The ability to understand causality from data is one of the major milestones of human-level intelligence. Causal Discovery (CD) algorithms can identify the cause-effect relationships among the variables of a system from related observational data with certain assumptions. Over the years, several methods have been developed primarily based on the statistical properties of data to uncover the underlying causal mechanism. In this study, we present an extensive discussion on the methods designed to perform causal discovery from both independent and identically distributed (I.I.D.) data and time series data. For this purpose, we first introduce the common terminologies used in causal discovery literature and then provide a comprehensive discussion of the algorithms designed to identify causal relations in different settings. We further discuss some of the benchmark datasets available for evaluating the algorithmic performance, off-the-shelf tools or software packages to perform causal discovery readily, and the common metrics used to evaluate these methods. We also evaluate some widely used causal discovery algorithms on multiple benchmark datasets and compare their performances. Finally, we conclude by discussing the research challenges and the applications of causal discovery algorithms in multiple areas of interest.

Definition Search Book Streamline Icon: https://streamlinehq.com
References (190)
  1. Principal component analysis. Wiley interdisciplinary reviews: computational statistics, 2(4):433–459, 2010.
  2. State-of-the-art in artificial neural network applications: A survey. Heliyon, 4(11):e00938, 2018.
  3. Causal discovery on the effect of antipsychotic drugs on delirium patients in the icu using large ehr dataset. arXiv preprint arXiv:2205.01057, 2022a.
  4. Ckh: Causal knowledge hierarchy for estimating structural causal models from data and priors. arXiv preprint arXiv:2204.13775, 2022b.
  5. Hirotogu Akaike. Information theory and an extension of the maximum likelihood principle. Selected papers of hirotugu akaike, pp.  199–213, 1998.
  6. Quantifying causes of arctic amplification via deep learning based time-series causal inference. arXiv preprint arXiv:2303.07122, 2023.
  7. On the completeness of causal discovery in the presence of latent confounding with tiered background knowledge. In International Conference on Artificial Intelligence and Statistics, pp.  4002–4011. PMLR, 2020.
  8. A mixed noise and constraint-based approach to causal inference in time series. In Nuria Oliver, Fernando Pérez-Cruz, Stefan Kramer, Jesse Read, and Jose A. Lozano (eds.), Machine Learning and Knowledge Discovery in Databases. Research Track, pp.  453–468, Cham, 2021. Springer International Publishing. ISBN 978-3-030-86486-6.
  9. Entropy-based discovery of summary causal graphs in time series. Entropy, 24(8):1156, 2022a.
  10. Survey and evaluation of causal discovery methods for time series. Journal of Artificial Intelligence Research, 73:767–819, 2022b.
  11. Integer linear programming for the bayesian network structure learning problem. Artificial Intelligence, 244:258–271, 2017.
  12. The alarm monitoring system: A case study with two probabilistic inference techniques for belief networks. In AIME 89: Second European Conference on Artificial Intelligence in Medicine, London, August 29th–31st 1989. Proceedings, pp.  247–256. Springer, 1989.
  13. Alexis Bellot and Mihaela van der Schaar. Conditional independence testing using generative adversarial networks. Advances in Neural Information Processing Systems, 32, 2019.
  14. Scores for learning discrete causal graphs with unobserved confounders. Technical report, Technical Report R-83, Causal AI Lab, Columbia University, 2022.
  15. Richard A Berk. An introduction to sample selection bias in sociological data. American sociological review, pp.  386–398, 1983.
  16. The helmholtz-hodge decomposition—a survey. IEEE Transactions on visualization and computer graphics, 19(8):1386–1404, 2012.
  17. Structural causal model with expert augmented knowledge to estimate the effect of oxygen therapy. CHEST, 158(4):A636, 2020.
  18. Christopher M Bishop et al. Neural networks for pattern recognition. Oxford university press, 1995.
  19. Towards robust and versatile causal discovery for business applications. In Proceedings of the 22nd ACM SIGKDD International Conference on Knowledge Discovery and Data Mining, pp.  1435–1444, 2016.
  20. Cam: Causal additive models, high-dimensional order search and penalized regression. 2014.
  21. Wray Buntine. Theory refinement on bayesian networks. In Uncertainty proceedings 1991, pp.  52–60. Elsevier, 1991.
  22. Neural additive vector autoregression models for causal discovery in time series. In International Conference on Discovery Science, pp.  446–460. Springer, 2021.
  23. Sada: A general framework to support robust causation discovery. In International conference on machine learning, pp.  208–216. PMLR, 2013.
  24. Triad constraints for learning causal structure of latent variables. Advances in neural information processing systems, 32, 2019.
  25. A functional data method for causal dynamic network modeling of task-related fmri. Frontiers in neuroscience, 13:127, 2019.
  26. Fritl: A hybrid method for causal discovery in the presence of latent confounders. arXiv preprint arXiv:2103.14238, 2021.
  27. Evaluation methods and measures for causal learning algorithms. IEEE Transactions on Artificial Intelligence, 2022.
  28. David Maxwell Chickering. Learning bayesian networks is np-complete. In Learning from data, pp.  121–130. Springer, 1996.
  29. David Maxwell Chickering. Optimal structure identification with greedy search. Journal of machine learning research, 3(Nov):507–554, 2002.
  30. Selective greedy equivalence search: Finding optimal bayesian networks using a polynomial number of score evaluations. arXiv preprint arXiv:1506.02113, 2015.
  31. Learning high-dimensional directed acyclic graphs with latent and selection variables. The Annals of Statistics, pp.  294–321, 2012.
  32. Order-independent constraint-based causal structure learning. J. Mach. Learn. Res., 15(1):3741–3782, 2014.
  33. Pierre Comon. Independent component analysis, a new concept? Signal processing, 36(3):287–314, 1994.
  34. A permutation-based kernel conditional independence test. In UAI, pp.  132–141. Citeseer, 2014.
  35. What do college ranking data tell us about student retention: causal discovery in action. In Proceedings of 4th workshop on intelligent information systems. IPI PAN Press, Augustow, Poland, pp.  1–10. Citeseer, 1995.
  36. A glance at causality theories for artificial intelligence. A Guided Tour of Artificial Intelligence Research: Volume I: Knowledge Representation, Reasoning and Learning, pp.  275–305, 2020.
  37. Imme Ebert-Uphoff and Yi Deng. Using causal discovery to learn about our planet’s climate-recent progress.
  38. Imme Ebert-Uphoff and Yi Deng. Causal discovery for climate research using graphical models. Journal of Climate, 25(17):5648–5665, 2012.
  39. Imme Ebert-Uphoff and Yi Deng. Causal discovery in the geosciences—using synthetic data to learn how to interpret results. Computers & Geosciences, 99:50–60, 2017.
  40. On causal discovery from time series data using fci. Probabilistic graphical models, pp.  121–128, 2010.
  41. Stephen Fancsali. Causal discovery with models: behavior, affect, and learning in cognitive tutor algebra. In Educational Data Mining 2014. Citeseer, 2014.
  42. Causal inference in natural language processing: Estimation, prediction, interpretation and beyond. arXiv preprint arXiv:2109.00725, 2021.
  43. ecdans: Efficient temporal causal discovery from autocorrelated and non-stationary data (student abstract). Proceedings of the AAAI Conference on Artificial Intelligence, 37(13):16208–16209, June. 2023a. doi: 10.1609/aaai.v37i13.26964.
  44. Cdans: Temporal causal discovery from autocorrelated and non-stationary time series data. Proceedings of Machine Learning Research, 2023b. Accepted in 8th Machine Learning for Healthcare Conference, arXiv preprint arXiv:2302.03246.
  45. Learning bayesian network structure from massive datasets: The" sparse candidate" algorithm. arXiv preprint arXiv:1301.6696, 2013.
  46. A review of the role of causality in developing trustworthy ai systems. arXiv preprint arXiv:2302.06975, 2023.
  47. Structural causal model with expert augmented knowledge to estimate the effect of oxygen therapy on mortality in the icu. Artificial Intelligence in Medicine, 137:102493, 2023.
  48. Learning gaussian networks. In Uncertainty Proceedings 1994, pp.  235–243. Elsevier, 1994.
  49. The stable model semantics for logic programming. In ICLP/SLP, volume 88, pp.  1070–1080. Cambridge, MA, 1988.
  50. High-recall causal discovery for autocorrelated time series with latent confounders. Advances in Neural Information Processing Systems, 33:12615–12625, 2020.
  51. Review of causal discovery methods based on graphical models. Frontiers in genetics, 10:524, 2019.
  52. Causal discovery from temporally aggregated time series. In Uncertainty in artificial intelligence: proceedings of the… conference. Conference on Uncertainty in Artificial Intelligence, volume 2017. NIH Public Access, 2017.
  53. Learning functional causal models with generative neural networks. In Explainable and interpretable models in computer vision and machine learning, pp.  39–80. Springer, 2018.
  54. Clive WJ Granger. Investigating causal relations by econometric models and cross-spectral methods. Econometrica: journal of the Econometric Society, pp.  424–438, 1969.
  55. A survey of learning causality with data: Problems and methods. ACM Computing Surveys (CSUR), 53(4):1–37, 2020.
  56. Gene selection for cancer classification using support vector machines. Machine learning, 46(1):389–422, 2002.
  57. Emmet Hall-Hoffarth. Causal discovery of macroeconomic state-space models. arXiv preprint arXiv:2204.02374, 2022.
  58. What can we learn about climate model runs from their causal signatures. In Proceedings of the Fifth International Workshop on Climate Informatics: CI, volume 2223, 2015.
  59. Kcrl: A prior knowledge based causal discovery framework with reinforcement learning. Proceedings of Machine Learning Research, 182(2022):1–24, 2022.
  60. Kgs: Causal discovery using knowledge-guided greedy equivalence search. arXiv preprint arXiv:2304.05493, 2023.
  61. Causal structure learning. Annual Review of Statistics and Its Application, 5:371–391, 2018.
  62. Nonlinear causal discovery with additive noise models. Advances in neural information processing systems, 21, 2008.
  63. Software project risk analysis using bayesian networks with causality constraints. Decision Support Systems, 56:439–449, 2013.
  64. Generalized score functions for causal discovery. In Proceedings of the 24th ACM SIGKDD international conference on knowledge discovery & data mining, pp.  1551–1560, 2018a.
  65. Generalized score functions for causal discovery. In Proceedings of the 24th ACM SIGKDD international conference on knowledge discovery & data mining, pp.  1551–1560, 2018b.
  66. Causal discovery from heterogeneous/nonstationary data. J. Mach. Learn. Res., 21(89):1–53, 2020.
  67. Neural autoregressive flows. In International Conference on Machine Learning, pp.  2078–2087. PMLR, 2018c.
  68. Benchmarking of data-driven causality discovery approaches in the interactions of arctic sea ice and atmosphere. Frontiers in big Data, 4:642182, 2021.
  69. Aapo Hyvarinen. Fast and robust fixed-point algorithms for independent component analysis. IEEE transactions on Neural Networks, 10(3):626–634, 1999.
  70. Estimation of a structural vector autoregression model using non-gaussianity. Journal of Machine Learning Research, 11(5), 2010.
  71. Discovery of causal models that contain latent variables through bayesian scoring of independence constraints. In Machine Learning and Knowledge Discovery in Databases: European Conference, ECML PKDD 2017, Skopje, Macedonia, September 18–22, 2017, Proceedings, Part II 10, pp.  142–157. Springer, 2017.
  72. Causal discovery from soft interventions with unknown targets: Characterization and learning. Advances in neural information processing systems, 33:9551–9561, 2020.
  73. Categorical reparameterization with gumbel-softmax. arXiv preprint arXiv:1611.01144, 2016.
  74. Causal machine learning: A survey and open problems. arXiv preprint arXiv:2206.15475, 2022.
  75. Causal discovery toolbox: Uncover causal relationships in python. arXiv preprint arXiv:1903.02278, 2019.
  76. Structural agnostic modeling: Adversarial learning of causal graphs. arXiv preprint arXiv:1803.04929, 2018.
  77. Causal autoregressive flows. In International conference on artificial intelligence and statistics, pp.  3520–3528. PMLR, 2021.
  78. Experimental design for learning causal graphs with latent variables. Advances in Neural Information Processing Systems, 30, 2017.
  79. Characterization and learning of causal graphs with latent variables from soft interventions. Advances in Neural Information Processing Systems, 32, 2019.
  80. Andrei N Kolmogorov. On tables of random numbers. Sankhyā: The Indian Journal of Statistics, Series A, pp.  369–376, 1963.
  81. Bayesian artificial intelligence. CRC press, 2010.
  82. Gradient-based neural dag learning. arXiv preprint arXiv:1906.02226, 2019.
  83. Functional system and areal organization of a highly sampled individual human brain. Neuron, 87(3):657–670, 2015.
  84. Local computations with probabilities on graphical structures and their application to expert systems. Journal of the Royal Statistical Society: Series B (Methodological), 50(2):157–194, 1988.
  85. Data generating process to evaluate causal discovery techniques for time series data. arXiv preprint arXiv:2104.08043, 2021.
  86. Richard Lawton et al. Time series analysis and its applications: Robert h. shumway and david s. stoffer; springer texts in statistics; 2000, springer-verlag;[uk pound] 55, us $ 79.95, isbn 0-387-98950-1. International Journal of Forecasting, 17(2):299–301, 2001.
  87. Towards robust relational causal discovery. In Uncertainty in Artificial Intelligence, pp.  345–355. PMLR, 2020.
  88. Causal discovery from observational and interventional data across multiple environments.
  89. A hybrid causal structure learning algorithm for mixed-type data. 2022.
  90. Lek-Heng Lim. Hodge laplacians on graphs. Siam Review, 62(3):685–715, 2020.
  91. Efficient neural causal discovery without acyclicity constraints. arXiv preprint arXiv:2107.10483, 2021.
  92. Disentangling observed causal effects from latent confounders using method of moments. arXiv preprint arXiv:2101.06614, 2021.
  93. Amortized causal discovery: Learning to infer causal graphs from time-series data. In Conference on Causal Learning and Reasoning, pp.  509–525. PMLR, 2022.
  94. Improving causal discovery by optimal bayesian network learning. In Proceedings of the AAAI Conference on Artificial Intelligence, volume 35, pp.  8741–8748, 2021.
  95. Bayesian networks in biomedicine and health-care. Artificial intelligence in medicine, 30(3):201–214, 2004.
  96. Causal discovery of flight service process based on event sequence. Journal of Advanced Transportation, 2021, 2021.
  97. Estimating causal effects with ancestral graph markov models. In Conference on Probabilistic Graphical Models, pp.  299–309. PMLR, 2016a.
  98. Estimating causal effects with ancestral graph markov models. In Conference on Probabilistic Graphical Models, pp.  299–309. PMLR, 2016b.
  99. A study in causal discovery from population-based infant birth and death records. In Proceedings of the AMIA Symposium, pp.  315. American Medical Informatics Association, 1999.
  100. Interpretable models for granger causality using self-explaining neural networks. arXiv preprint arXiv:2101.07600, 2021.
  101. Model specification searches in structural equation modeling using tabu search. Structural Equation Modeling: A Multidisciplinary Journal, 5(4):365–376, 1998.
  102. Tshilidzi Marwala. Causality, correlation and artificial intelligence for rational decision making. World Scientific, 2015.
  103. Testing conditional independence on discrete data using stochastic complexity. In The 22nd International Conference on Artificial Intelligence and Statistics, pp.  496–505. PMLR, 2019.
  104. Interactive causal structure discovery in earth system sciences. In The KDD’21 Workshop on Causal Discovery, pp.  3–25. PMLR, 2021.
  105. Alex C Michalos. A probabilistic theory of causality. Philosophy of Science, 39(4):560–561, 1972.
  106. Distinguishing between cause and effect. In Causality: Objectives and Assessment, pp.  147–156. PMLR, 2010.
  107. Joint causal inference from multiple contexts. The Journal of Machine Learning Research, 21(1):3919–4026, 2020.
  108. Optimal reinsertion: A new search operator for accelerated and more accurate bayesian network structure learning. In ICML, volume 3, pp.  552–559, 2003.
  109. Causeme: an online system for benchmarking causal discovery methods, 2020.
  110. Causal discovery with attention-based convolutional neural networks. Machine Learning and Knowledge Extraction, 1(1):19, 2019.
  111. AS Nemirovsky. Optimization ii. numerical methods for nonlinear continuous optimization. 1999.
  112. A graph autoencoder approach to causal structure learning. arXiv preprint arXiv:1911.07420, 2019.
  113. On the role of sparsity and dag constraints for learning linear dags. Advances in Neural Information Processing Systems, 33:17943–17954, 2020.
  114. Masked gradient-based causal structure learning. In Proceedings of the 2022 SIAM International Conference on Data Mining (SDM), pp.  424–432. SIAM, 2022.
  115. Causal discovery in machine learning: Theories and applications. Journal of Dynamics and Games, 8(3):203, 2021.
  116. Evaluation of methods for causal discovery in hydrometeorological systems. Water Resources Research, 56(7):e2020WR027251, 2020.
  117. Agnieszka Onisko. Probabilistic causal models in medicine: Application to diagnosis of liver disorders. In Ph. D. dissertation, Inst. Biocybern. Biomed. Eng., Polish Academy Sci., Warsaw, Poland, 2003.
  118. Dynotears: Structure learning from time-series data. In International Conference on Artificial Intelligence and Statistics, pp.  1595–1605. PMLR, 2020.
  119. Judea Pearl. Probabilistic Reasoning in Intelligent Systems: Networks of Plausible Inference. Morgan Kaufman Publishers, San Mateo, CA, 1988.
  120. Judea Pearl. Causality. Cambridge university press, 2009.
  121. Interpreting and using cpdags with background knowledge. arXiv preprint arXiv:1707.02171, 2017.
  122. Structural intervention distance for evaluating causal graphs. Neural computation, 27(3):771–799, 2015.
  123. Causal inference on time series using restricted structural equation models. Advances in Neural Information Processing Systems, 26, 2013.
  124. Mark Peyrot. Causal analysis: Theory and application. Journal of Pediatric Psychology, 21(1):3–24, 1996.
  125. Towards a rigorous assessment of systems biology models: the dream3 challenges. PloS one, 5(2):e9202, 2010.
  126. Rafael Quintana. The structure of academic achievement: Searching for proximal mechanisms using causal discovery algorithms. Sociological Methods & Research, pp.  0049124120926208, 2020.
  127. Adjacency-faithfulness and conservative causal inference. arXiv preprint arXiv:1206.6843, 2012.
  128. Joseph D Ramsey. Scaling up greedy causal search for continuous variables. arXiv preprint arXiv:1507.07749, 2015.
  129. Gaussian processes for machine learning, volume 1. Springer, 2006.
  130. David B Resnik. Randomized controlled trials in environmental health research: ethical issues. Journal of environmental health, 70(6):28, 2008.
  131. Ancestral graph markov models. The Annals of Statistics, 30(4):962–1030, 2002a.
  132. Ancestral graph markov models. The Annals of Statistics, 30(4):962–1030, 2002b.
  133. Jakob Runge. Conditional independence testing based on a nearest-neighbor estimator of conditional mutual information. In International Conference on Artificial Intelligence and Statistics, pp.  938–947. PMLR, 2018.
  134. Jakob Runge. Discovering contemporaneous and lagged causal relations in autocorrelated nonlinear time series datasets. In Conference on Uncertainty in Artificial Intelligence, pp.  1388–1397. PMLR, 2020.
  135. Detecting and quantifying causal associations in large nonlinear time series datasets. Science advances, 5(11):eaau4996, 2019.
  136. Causal protein-signaling networks derived from multiparameter single-cell data. Science, 308(5721):523–529, 2005.
  137. A meta-reinforcement learning algorithm for causal discovery. arXiv preprint arXiv:2207.08457, 2022.
  138. Richard Scheines. An introduction to causal inference. 1997.
  139. Tetrad ii: Tools for discovery, 1994.
  140. On causal and anticausal learning. arXiv preprint arXiv:1206.6471, 2012.
  141. Gideon Schwarz. Estimating the dimension of a model. The annals of statistics, pp.  461–464, 1978a.
  142. Gideon Schwarz. Estimating the dimension of a model. The annals of statistics, pp.  461–464, 1978b.
  143. Marco Scutari. Learning bayesian networks with the bnlearn r package. arXiv preprint arXiv:0908.3817, 2009.
  144. Model-powered conditional independence test. Advances in neural information processing systems, 30, 2017.
  145. Challenges and opportunities with causal discovery algorithms: application to alzheimer’s pathophysiology. Scientific reports, 10(1):1–12, 2020.
  146. A novel method for causal structure discovery from ehr data and its application to type-2 diabetes mellitus. Scientific reports, 11(1):1–9, 2021.
  147. Meaningful climate science. Climatic Change, 169(1-2):17, 2021.
  148. A linear non-gaussian acyclic model for causal discovery. Journal of Machine Learning Research, 7(10), 2006.
  149. Directlingam: A direct method for learning a linear non-gaussian structural equation model. The Journal of Machine Learning Research, 12:1225–1248, 2011.
  150. Understanding controlled trials. why are randomised controlled trials important? BMJ: British Medical Journal, 316(7126):201, 1998.
  151. Factorized normalized maximum likelihood criterion for learning bayesian network structures. In Proceedings of the 4th European workshop on probabilistic graphical models (PGM-08), pp.  257–272, 2008.
  152. Using a general prior knowledge graph to improve data-driven causal network learning. In AAAI Spring Symposium: Combining Machine Learning with Knowledge Engineering, 2021.
  153. Bayesian analysis in expert systems. Statistical science, pp.  219–247, 1993.
  154. Peter Spirtes. An anytime algorithm for causal inference. In International Workshop on Artificial Intelligence and Statistics, pp.  278–285. PMLR, 2001.
  155. Causation, prediction, and search. MIT press, 2000a.
  156. Causation, prediction, and search. MIT press, 2000b.
  157. Causal structure discovery between clusters of nodes induced by latent factors. In Conference on Causal Learning and Reasoning, pp.  669–687. PMLR, 2022.
  158. Approximate kernel-based conditional independence tests for fast non-parametric causal discovery. Journal of Causal Inference, 7(1), 2019.
  159. Trek separation for gaussian graphical models. 2010.
  160. Causal network inference by optimal causation entropy. SIAM Journal on Applied Dynamical Systems, 14(1):73–106, 2015a.
  161. Nts-notears: Learning nonparametric temporal dags with time-series data and prior knowledge. arXiv preprint arXiv:2109.04286, 2021.
  162. Using causal discovery for feature selection in multivariate numerical time series. Machine Learning, 101(1):377–395, 2015b.
  163. Distinguishing cause from effect using quantiles: Bivariate quantile causal discovery. In International Conference on Machine Learning, pp.  9311–9323. PMLR, 2020.
  164. Score-based vs constraint-based causal learning in the presence of confounders. In Cfa@ uai, pp.  59–67, 2016.
  165. Time and sample efficient discovery of markov blankets and direct causal relations. In Proceedings of the ninth ACM SIGKDD international conference on Knowledge discovery and data mining, pp.  673–678, 2003.
  166. The max-min hill-climbing bayesian network structure learning algorithm. Machine learning, 65(1):31–78, 2006.
  167. Equivalence and synthesis of causal models. In Probabilistic and Causal Inference: The Works of Judea Pearl, pp.  221–236. 2022.
  168. D’ya like dags? a survey on structure learning and causal discovery. ACM Computing Surveys (CSUR), 2021.
  169. Causal discovery in manufacturing: A structured literature review. Journal of Manufacturing and Materials Processing, 6(1):10, 2022.
  170. Prior-knowledge-driven local causal structure learning and its application on causal discovery between type 2 diabetes and bone mineral density. IEEE Access, 8:108798–108810, 2020.
  171. Ordering-based causal discovery with reinforcement learning. arXiv preprint arXiv:2105.06631, 2021.
  172. Conditional distance correlation. Journal of the American Statistical Association, 110(512):1726–1734, 2015.
  173. A causal discovery approach to identifying active components of herbal medicine. In 2005 IEEE Engineering in Medicine and Biology 27th Annual Conference, pp.  7718–7721. IEEE, 2006.
  174. Dags with no fears: A closer look at continuous optimization for learning bayesian networks. Advances in Neural Information Processing Systems, 33:3895–3906, 2020.
  175. Naftali Weinberger. Faithfulness, coordination and causal coincidences. Erkenntnis, 83(2):113–133, 2018.
  176. A* lasso for learning a sparse bayesian network structure for continuous variables. Advances in Neural Information Processing Systems, 26, 2013.
  177. A structure learning algorithm for bayesian network using prior knowledge. Journal of Computer Science and Technology, 30(4):713–724, 2015.
  178. Causalvae: Disentangled representation learning via neural structural causal models. In Proceedings of the IEEE/CVF conference on computer vision and pattern recognition, pp.  9593–9602, 2021.
  179. Dag-gnn: Dag structure learning with graph neural networks. In International Conference on Machine Learning, pp.  7154–7163. PMLR, 2019.
  180. Dags with no curl: An efficient dag structure learning approach. In International Conference on Machine Learning, pp.  12156–12166. PMLR, 2021.
  181. Learning optimal bayesian networks: A shortest path perspective. Journal of Artificial Intelligence Research, 48:23–65, 2013.
  182. gcastle: A python toolbox for causal discovery. arXiv preprint arXiv:2111.15155, 2021a.
  183. gcastle: A python toolbox for causal discovery. arXiv preprint arXiv:2111.15155, 2021b.
  184. Distinguishing causes from effects using nonlinear acyclic causal models. In Causality: Objectives and Assessment, pp.  157–164. PMLR, 2010.
  185. Kernel-based conditional independence test and application in causal discovery. arXiv preprint arXiv:1202.3775, 2012.
  186. Domain adaptation under target and conditional shift. In International conference on machine learning, pp.  819–827. PMLR, 2013.
  187. On estimation of functional causal models: general results and application to the post-nonlinear causal model. ACM Transactions on Intelligent Systems and Technology (TIST), 7(2):1–22, 2015.
  188. Causal discovery from nonstationary/heterogeneous data: Skeleton estimation and orientation determination. In IJCAI: Proceedings of the Conference, volume 2017, pp.  1347. NIH Public Access, 2017.
  189. Dags with no tears: Continuous optimization for structure learning. Advances in Neural Information Processing Systems, 31, 2018.
  190. Causal discovery with reinforcement learning. arXiv preprint arXiv:1906.04477, 2019.
User Edit Pencil Streamline Icon: https://streamlinehq.com
Authors (3)
  1. Uzma Hasan (5 papers)
  2. Emam Hossain (4 papers)
  3. Md Osman Gani (15 papers)
Citations (19)

Summary

We haven't generated a summary for this paper yet.