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Alleviating the Influence of Weak Data Asymmetries on Granger-Causal Analyses

机译:缓解弱数据不对称性对Granger因果分析的影响

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We introduce the concepts of weak and strong asymmetries in multivariate time series in the context of causal modeling. Weak asymmetries are by definition differences in univariate properties of the data, which are not necessarily related to causal relationships between time series. Nevertheless, they might still mislead (in particular Granger-) causal analyses. We propose two general strategies to overcome the negative influence of weak asymmetries in causal modeling. One is to assess the confidence of causal predictions using the antisymmetry-symmetry ratio, while the other one is based on comparing the result of a causal analysis to that of an equivalent analysis of time-reversed data. We demonstrate that Granger Causality applied to the SiSEC challenge on causal analysis of simulated EEG data greatly benefits from our suggestions.
机译:在因果模型的背景下,我们介绍了多元时间序列中的弱和强不对称性的概念。从定义上说,弱非对称性是数据单变量性质的差异,不一定与时间序列之间的因果关系有关。但是,他们可能仍然会误导(尤其是Granger)因果分析。我们提出了两种通用策略来克服因果建模中的弱不对称性带来的负面影响。一种是使用反对称性/对称性比率来评估因果关系预测的置信度,而另一种则是基于将因果关系分析的结果与时间反转数据的等效分析结果进行比较。我们证明,格兰杰因果关系应用于模拟的EEG数据因果关系分析中的SiSEC挑战极大地受益于我们的建议。

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