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Explorations of Temporal Causality Using Partial Coherence

机译:利用部分连贯探索颞会因果关系

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In this paper we explore partial coherence as a tool for evaluating the causal, anti-causal or mixed-causal dependence of one time series on another. The key idea is to establish a connection between partial coherence and questions of causality. Once this connection is established, then a scale-invariant partial coherence statistic is used to resolve the question of temporal causality. This coherence statistic is shown to be a likelihood ratio. It may be computed from a composite covariance matrix or from its inverse, the information matrix. Numerical experiments demonstrate the application of partial coherence to the resolution of temporal causality.
机译:在本文中,我们将部分连贯作为评估另一个时间序列的因果,反因果或混合因果依赖性的工具。关键的想法是建立部分一致性与因果关系问题之间的联系。建立此连接后,尺度不变的部分连贯统计量用于解决时间因果关系问题。这种相干统计数据被认为是一种似然比。它可以从复合协方差矩阵或其逆,信息矩阵计算。数值实验证明了部分连贯性对时间因果关系的分辨率的应用。

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