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Testing for Granger Causality in the Frequency Domain: A Phase Resampling Method

机译:在频域中测试格兰杰因果关系:一种相位重采样方法

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摘要

This article introduces phase resampling, an existing but rarely used surrogate data method for making statistical inferences of Granger causality in frequency domain time series analysis. Granger causality testing is essential for establishing causal relations among variables in multivariate dynamic processes. However, testing for Granger causality in the frequency domain is challenging due to the nonlinear relation between frequency domain measures (e.g., partial directed coherence, generalized partial directed coherence) and time domain data. Through a simulation study, we demonstrate that phase resampling is a general and robust method for making statistical inferences even with short time series. With Gaussian data, phase resampling yields satisfactory type I and type II error rates in all but one condition we examine: when a small effect size is combined with an insufficient number of data points. Violations of normality lead to slightly higher error rates but are mostly within acceptable ranges. We illustrate the utility of phase resampling with two empirical examples involving multivariate electroencephalography (EEG) and skin conductance data.
机译:本文介绍了相位重采样,这是一种在频域时间序列分析中进行格兰杰因果关系统计推断的现有但很少使用的替代数据方法。 Granger因果关系测试对于在多元动态过程中建立变量之间的因果关系至关重要。但是,由于频域量度(例如,部分有向相干,广义部分有向相干)和时域数据之间存在非线性关系,因此在频域中测试格兰杰因果关系具有挑战性。通过仿真研究,我们证明了即使在较短的时间序列下,相位重采样也是进行统计推断的通用且鲁棒的方法。利用高斯数据,除了以下一种情况外,相位重采样在所有情况下均会产生令人满意的I型和II型错误率:当效应量较小且数据点数量不足时。违反正常性会导致更高的错误率,但大部分都在可接受的范围内。我们用两个涉及多元脑电图(EEG)和皮肤电导数据的经验示例说明了相位重采样的实用性。

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