4.7 Article

Piecewise forecasting of nonlinear time series with model tree dynamic Bayesian networks

期刊

INTERNATIONAL JOURNAL OF INTELLIGENT SYSTEMS
卷 37, 期 11, 页码 9108-9137

出版社

WILEY-HINDAWI
DOI: 10.1002/int.22982

关键词

dynamic Bayesian networks; forecasting; piecewise regression; regression trees; time series

资金

  1. Spanish Ministry of Science, Innovation and Universities [PID2019-109247GB-I00]
  2. BBVA Foundation

向作者/读者索取更多资源

When modeling multivariate continuous time series, it is common to encounter nonlinear processes or drift away from the original distribution. To address this issue, we propose a hybrid model that combines a model tree with DBNs to obtain nonlinear forecasts. Experimental results demonstrate that our model outperforms standard DBN models when dealing with nonlinear processes and is competitive with state-of-the-art time series forecasting methods.
When modelling multivariate continuous time series, a common issue is to find that the original processes that generated the data are nonlinear or that they drift away from the original distribution as the system evolves over time. In these scenarios, using a linear model such as a Gaussian dynamic Bayesian network (DBN) can result in severe forecasting inaccuracies due to the structure and parameters of the model remaining constant without considering either the elapsed time or the state of the system. To approach this problem, we propose a hybrid model that combines a model tree with DBNs. The model first divides the original data set into different scenarios based on the splits made by the tree over the system variables and then performs a piecewise regression in each branch of the tree to obtain nonlinear forecasts. The experimental results on three different datasets show that our model outperforms standard DBN models when dealing with nonlinear processes and is competitive with state-of-the-art time series forecasting methods.

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