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Autoregressive causal relation: Digital filtering approach to causality measures in frequency domain

机译:自回归因果关系:频域中因果关系度量的数字滤波方法

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摘要

A novel measure of the Autoregressive Causal Relation based on a multivariate autoregressive model is proposed. It reveals the strength of the connections among a simultaneous time series and also the direction of the information flow. It is defined in the frequency domain, similar to the formerly published methods such as: Directed Transfer Function, Direct Directed Transfer Function, Partial Directed Coherence, and Generalized Partial Directed Coherence. Compared to the Granger causality concept, frequency decomposition extends the possibility to reveal the frequency rhythms participating on the information flow in causal relations. The Autoregressive Causal Relation decomposes diagonal elements of a spectral matrix and enables a user to distinguish between direct and indirect causal relations. The main advantage lies in its definition using power spectral densities, thus allowing for a clear interpretation of strength of causal relation in meaningful physical terms. The causal measures can be used in neuroscience applications like the analysis of underlying structures of brain connectivity in neural multichannel time series during different tasks measured via electroencephalography or functional magnetic resonance imaging, or other areas using the multivariate autoregressive models for causality modeling like econometrics or atmospheric physics but this paper is focused on theoretical aspects and model data examples in order to illustrate a behavior of methods in known situations.
机译:提出了一种基于多元自回归模型的自回归因果关系度量方法。它揭示了同时时间序列之间的连接强度以及信息流的方向。它在频域中定义,类似于以前发布的方法,例如:有向传递函数,有向定向传递函数,部分有向相干和广义部分有向相干。与格兰杰因果关系概念相比,频率分解扩展了揭示因果关系中参与信息流的频率节律的可能性。自回归因果关系分解频谱矩阵的对角元素,并使用户能够区分直接因果关系和间接因果关系。主要优点在于可以使用功率谱密度进行定义,因此可以用有意义的物理术语清楚地解释因果关系的强度。因果关系度量可以用于神经科学应用,例如在通过脑电图或功能磁共振成像测量的不同任务期间,分析神经多通道时间序列中大脑连接性的基础结构,或使用多元自回归模型进行因果关系建模的其他变量,如计量经济学或大气物理学,但是本文着重于理论方面和模型数据示例,以说明已知情况下方法的行为。

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