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A novel Granger causality method based on HSIC-Lasso for revealing nonlinear relationship between multivariate time series

机译:基于HSIC-LASSO的新型格兰杰因果关系方法,用于揭示多元时间序列非线性关系的影响

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摘要

The causality analysis is an important research topic in time series data mining. Granger causality analysis is a powerful method that determines cause and effect based on predictability. However, the traditional Granger causality is limited to analyzing linear causality between bivariate time series, because it is based on vector autoregressive models. In this paper, we propose a novel method, named Hilbert-Schmidt independence criterion Lasso Granger causality (HSIC-Lasso-GC), for revealing nonlinear causality between multivariate time series. Firstly, for each time series, we perform stationarity test and state space reconstruction to extract the historical information. Then, we build a HSIC-Lasso model of all input variables and output variable, where the optimal model is selected by generalized information criterion. Finally, according to the significance test, we get the causality analysis results from all input variables to output variable. In the simulations, we use two benchmark datasets and two actual datasets to test the effectiveness of the proposed method. The results show that the proposed method can effectively analyze nonlinear causality between multivariate time series. (C) 2019 Published by Elsevier B.V.
机译:因果区分析是时间序列数据挖掘的重要研究主题。格兰杰因果关系分析是一种强大的方法,即确定基于可预测性的原因和效果。然而,传统的GRANGER因果关系仅限于分析双变量时间序列之间的线性因果关系,因为它基于矢量自回归模型。在本文中,我们提出了一种名为Hilbert-Schmidt独立性标准套索格子因果关系(HSIC-LASSO-GC)的新型方法,用于在多变量时间序列之间揭示非线性因果关系。首先,对于每个时间序列,我们执行实质性测试和状态空间重建以提取历史信息。然后,我们构建了所有输入变量和输出变量的HSIC-LASSO模型,其中通过广义信息标准选择了最佳模型。最后,根据重要性测试,我们得到了所有输入变量的因果关系分析,从而输出变量。在模拟中,我们使用两个基准数据集和两个实际数据集来测试所提出的方法的有效性。结果表明,该方法可以有效地分析多变量时间序列之间的非线性因果关系。 (c)2019年由elestvier b.v发布。

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