A novel decomposed-ensemble time series forecasting framework: capturing underlying volatility information (2310.08812v4)
Abstract: Time series forecasting represents a significant and challenging task across various fields. Recently, methods based on mode decomposition have dominated the forecasting of complex time series because of the advantages of capturing local characteristics and extracting intrinsic modes from data. Unfortunately, most models fail to capture the implied volatilities that contain significant information. To enhance the prediction of contemporary diverse and complex time series, we propose a novel time series forecasting paradigm that integrates decomposition with the capability to capture the underlying fluctuation information of the series. In our methodology, we implement the Variational Mode Decomposition algorithm to decompose the time series into K distinct sub-modes. Following this decomposition, we apply the Generalized Autoregressive Conditional Heteroskedasticity (GARCH) model to extract the volatility information in these sub-modes. Subsequently, both the numerical data and the volatility information for each sub-mode are harnessed to train a neural network. This network is adept at predicting the information of the sub-modes, and we aggregate the predictions of all sub-modes to generate the final output. By integrating econometric and artificial intelligence methods, and taking into account both the numerical and volatility information of the time series, our proposed framework demonstrates superior performance in time series forecasting, as evidenced by the significant decrease in MSE, RMSE, and MAPE in our comparative experimental results.
- Understanding dropout. Advances in Neural information processing systems 26.
- Forecasting oil prices: Smooth transition and neural network augmented garch family models. Journal of Petroleum Science and Engineering 109, 230–240.
- A conditionally heteroskedastic time series model for speculative prices and rates of return. The review of economics and statistics , 542–547.
- Distribution of residual autocorrelations in autoregressive-integrated moving average time series models. Journal of the American Statistical Association 65, 1509–1526.
- Financial time series forecasting model based on ceemdan and lstm. Physica A: Statistical mechanics and its applications 519, 127–139.
- On the properties of neural machine translation: Encoder-decoder approaches. arXiv preprint arXiv:1409.1259 .
- Variational mode decomposition. IEEE transactions on signal processing 62, 531–544.
- A sentiment-enhanced hybrid model for crude oil price forecasting. Expert Systems with Applications 215, 119329.
- Augmented Lagrangian methods: applications to the numerical solution of boundary-value problems. Elsevier.
- Optimal parameter selection for the alternating direction method of multipliers (admm): quadratic problems. IEEE Transactions on Automatic Control 60, 644–658.
- Forecasts for international financial series with vmd algorithms. Journal of Asian Economics 80, 101458.
- Long short-term memory. Neural computation 9, 1735–1780.
- A hybrid deep learning approach by integrating lstm-ann networks with garch model for copper price volatility prediction. Physica A: Statistical Mechanics and its Applications 557, 124907.
- A hybrid model for carbon price forecasting using garch and long short-term memory network. Applied Energy 285, 116485.
- A novel hybrid model on the prediction of time series and its application for the gold price analysis and forecasting. Physica A: Statistical Mechanics and its Applications 527, 121454.
- The hilbert transform. Mathematics Master’s Thesis. Växjö University, Suecia. Disponible en internet: http://w3. msi. vxu. se/exarb/mj_ex. pdf, consultado el 19.
- Adam: A method for stochastic optimization. arXiv preprint arXiv:1412.6980 .
- Volatility forecast using hybrid neural network models. Expert Systems with Applications 41, 2437–2442.
- A hierarchical temporal attention-based lstm encoder-decoder model for individual mobility prediction. Neurocomputing 403, 153–166.
- Crude oil price forecasting based on a novel hybrid long memory garch-m and wavelet analysis model. Physica A: Statistical Mechanics and its Applications 543, 123532.
- Recurrent neural networks. Design and Applications 5, 64–67.
- Generalized wiener filtering computation techniques. IEEE Transactions on Computers 100, 636–641.
- On empirical mode decomposition and its algorithms, in: IEEE-EURASIP workshop on nonlinear signal and image processing, Grado: IEEE. pp. 8–11.
- Noa-lstm: An efficient lstm cell architecture for time series forecasting. Expert Systems with Applications , 122333.
- A decomposition–ensemble model with data-characteristic-driven reconstruction for crude oil price forecasting. Applied Energy 156, 251–267.
- A review of recurrent neural networks: Lstm cells and network architectures. Neural computation 31, 1235–1270.
- Recurrent neural network regularization. arXiv preprint arXiv:1409.2329 .
- A spatial correlation prediction model of urban pm2. 5 concentration based on deconvolution and lstm. Neurocomputing 544, 126280.
- Oil price forecasting: A hybrid gru neural network based on decomposition–reconstruction methods. Expert Systems with Applications 218, 119617.
- k-gcn-lstm: A k-hop graph convolutional network and long–short-term memory for ship speed prediction. Physica A: Statistical Mechanics and its Applications 606, 128107.