TY - JOUR
T1 - Testing for Granger Causality in the Frequency Domain
T2 - A Phase Resampling Method
AU - Liu, Siwei
AU - Molenaar, Peter
N1 - Funding Information:
This work was supported by Grant CA-DHCE- 2195-H from USDA-NIFA to Siwei Liu and Grant 1157220 from NSF to Peter C. M. Molenaar.
Publisher Copyright:
© 2016 Taylor & Francis Group, LLC.
PY - 2016/1/2
Y1 - 2016/1/2
N2 - 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.
AB - 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.
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U2 - 10.1080/00273171.2015.1100528
DO - 10.1080/00273171.2015.1100528
M3 - Article
C2 - 26881957
AN - SCOPUS:84958757160
SN - 0027-3171
VL - 51
SP - 53
EP - 66
JO - Multivariate Behavioral Research
JF - Multivariate Behavioral Research
IS - 1
ER -