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The MVGC multivariate Granger causality toolbox: a new approach to Granger-causal inference

机译:mVGC多变量格兰杰因果关系工具箱:格兰杰因果推理的新方法

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摘要

Background: Wiener-Granger causality (“G-causality”) is a statistical notion of causality applicable to time series data, whereby cause precedes, and helps predict, effect. It is defined in both time and frequency domains, and allows for the conditioning out of common causal influences. Originally developed in the context of econometric theory, it has since achieved broad application in the neurosciences and beyond. Prediction in the G-causality formalism is based on VAR (Vector AutoRegressive) modelling.ududNew Method: The MVGC Matlab c Toolbox approach to G-causal inference is based on multiple equivalent representations of a VAR model by (i) regression parameters, (ii) the autocovariance sequence and (iii) the cross-power spectral density of the underlying process. It features a variety of algorithms for moving between these representations, enabling selection of the most suitable algorithms with regard to computational efficiency and numerical accuracy.ududResults: In this paper we explain the theoretical basis, computational strategy and application to empirical G-causal inference of the MVGC Toolbox. We also show via numerical simulations the advantages of our Toolbox over previous methods in terms of computational accuracy and statistical inference.ududComparison with Existing Method(s): The standard method of computing G-causality involves estimation of parameters for both a full and a nested (reduced) VAR model. The MVGC approach, by contrast, avoids explicit estimation of the reduced model, thus eliminating a source of estimation error and improving statistical power, and in addition facilitates fast and accurate estimation of the computationally awkward case of conditional G-causality in the frequency domain.ududConclusions: The MVGC Toolbox implements a flexible, powerful and efficient approach to G-causal inference.ududKeywords: Granger causality, vector autoregressive modelling, time series analysis
机译:背景:Wiener-Granger因果关系(“ G因果关系”)是一种适用于时间序列数据的因果关系的统计概念,因果关系在因果之前,并有助于预测和影响。它在时域和频域中均已定义,并可以排除常见的因果影响。它最初是在计量经济学理论的背景下开发的,此后在神经科学及其他领域获得了广泛的应用。 G因果形式主义中的预测基于VAR(向量自回归)建模。 ud ud新方法:MVGC Matlab c工具箱方法进行G因果推断的基础是,通过(i)回归参数来表示VAR模型的多个等效表示形式,(ii)自协方差序列和(iii)基础过程的交叉功率谱密度。它具有在这些表示之间移动的多种算法,从而能够在计算效率和数值精度方面选择最合适的算法。 ud ud结果:在本文中,我们解释了理论依据,计算策略及其在经验G- MVGC工具箱的因果推论。我们还通过数值模拟显示了我们的工具箱在计算准确性和统计推断方面相对于先前方法的优势。 ud ud与现有方法的比较:计算G因果关系的标准方法涉及对两个参数的估计和嵌套的(精简的)VAR模型。相比之下,MVGC方法避免了对简化模型的显式估计,从而消除了估计误差的来源并提高了统计能力,此外,还有助于快速而准确地估计频域中条件G因果关系的计算笨拙情况。 ud ud结论:MVGC工具箱为G因果推理实现了一种灵活,强大而有效的方法。 ud ud关键字:Granger因果关系,向量自回归建模,时间序列分析

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  • 作者

    Barnett Lionel; Seth Anil K;

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  • 年度 2014
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  • 正文语种 en
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