This paper presents a general framework for modeling dependence in multivariate time series. Its fundamental approach relies on decomposing each signal in a system into various frequency components and then studying the dependence properties through these oscillatory activities.The unifying theme across the paper is to explore the strength of dependence and possible lead-lag dynamics through filtering. The proposed framework is capable of representing both linear and non-linear dependencies that could occur instantaneously or after some delay(lagged dependence). Examples for studying dependence between oscillations are illustrated through multichannel electroencephalograms. These examples emphasized that some of the most prominent frequency domain measures such as coherence, partial coherence,and dual-frequency coherence can be derived as special cases under this general framework.This paper also introduces related approaches for modeling dependence through phase-amplitude coupling and causality of (one-sided) filtered signals.
翻译:本文件介绍了在多变时间序列中建模依赖性的一般框架。其基本方法依赖于将系统中的每个信号分解成不同频率组成部分,然后通过这些随机活动研究依赖性特性。整个文件的统一主题是通过过滤探索依赖性的力量和可能的铅渣动态。拟议框架能够代表线性和非线性依赖性,这种依赖性可以瞬间发生或在某种延迟(依赖性滞后)之后发生。通过多通道电子脑图显示振荡之间依赖性的研究实例。这些实例强调,在这个总框架下,一些最突出的频率领域措施,如一致性、部分一致性和双频率一致性,可以作为特例加以推导。本文还介绍了通过(单方)过滤信号的分级混合和因果性来模拟依赖性的相关方法。