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首页> 外文期刊>Physical review, E >Causal inference in nonlinear systems: Granger causality versus time-delayed mutual information
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Causal inference in nonlinear systems: Granger causality versus time-delayed mutual information

机译:非线性系统的因果推断:格兰杰因果关系与延迟相互信息

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The Granger causality (GC) analysis has been extensively applied to infer causal interactions in dynamical systems arising from economy and finance, physics, bioinformatics, neuroscience, social science, and many other fields. In the presence of potential nonlinearity in these systems, the validity of the GC analysis in general is questionable. To illustrate this, here we first construct minimal nonlinear systems and show that the GC analysis fails to infer causal relations in these systems-it gives rise to all types of incorrect causal directions. In contrast, we show that the time-delayed mutual information (TDMI) analysis is able to successfully identify the direction of interactions underlying these nonlinear systems. We then apply both methods to neuroscience data collected from experiments and demonstrate that the TDMI analysis but not the GC analysis can identify the direction of interactions among neuronal signals. Our work exemplifies inference hazards in the GC analysis in nonlinear systems and suggests that the TDMI analysis can be an appropriate tool in such a case.
机译:GRANGER因果关系(GC)分析已被广泛应用于从经济和金融,物理,生物信息学,神经科学,社会科学和许多其他领域产生的动态系统中的因果关系。在这些系统中存在潜在的非线性,GC分析的有效性通常是值得怀疑的。为了说明这一点,我们首先构建最小的非线性系统,并表明GC分析无法推断出这些系统中的因果关系 - 它导致所有类型的错误因果方向。相反,我们表明,延迟的互信息(TDMI)分析能够成功地识别这些非线性系统潜在的相互作用的方向。然后,我们将两种方法应用于从实验中收集的神经科学数据,并证明TDMI分析但不是GC分析可以识别神经元信号之间的相互作用方向。我们的作品在非线性系统中的GC分析中举例说明了推理危害,并表明TDMI分析可以是这种情况下的适当工具。

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