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Estimating Time-Evolving Partial Coherence Between Signals via Multivariate Locally Stationary Wavelet Processes

机译:通过多元局部平稳小波过程估计信号之间随时间变化的部分相干性

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摘要

We consider the problem of estimating time-localized cross-dependence in a collection of nonstationary signals. To this end, we develop the multivariate locally stationary wavelet framework, which provides a time-scale decomposition of the signals and, thus, naturally captures the time-evolving scale-specific cross-dependence between components of the signals. Under the proposed model, we rigorously define and estimate two forms of cross-dependence measures: wavelet coherence and wavelet partial coherence. These dependence measures differ in a subtle but important way. The former is a broad measure of dependence, which may include indirect associations, i.e., dependence between a pair of signals that is driven by another signal. Conversely, wavelet partial coherence measures direct linear association between a pair of signals, i.e., it removes the linear effect of other observed signals. Our time-scale wavelet partial coherence estimation scheme thus provides a mechanism for identifying hidden dynamic relationships within a network of nonstationary signals, as we demonstrate on electroencephalograms recorded in a visual–motor experiment.
机译:我们考虑在非平稳信号集合中估计时间局部交叉依赖的问题。为此,我们开发了多元局部平稳小波框架,该框架提供了信号的时标分解,从而自然地捕获了信号成分之间随时间变化的标度特定的相互依赖性。在提出的模型下,我们严格定义和估计了两种形式的互相关度量:小波相干和小波部分相干。这些依赖措施在微妙但重要的方面有所不同。前者是一种广泛的依赖性度量,它可以包括间接关联,即,由另一个信号驱动的一对信号之间的依赖性。相反,小波部分相干测量一对信号之间的直接线性关联,即,它消除了其他观测信号的线性影响。因此,我们的时标小波部分相干估计方案提供了一种机制,可以识别非平稳信号网络中的隐藏动态关系,正如我们在视觉运动实验中记录的脑电图所证明的那样。

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