Publication | Open Access
Multivariate Granger causality: an estimation framework based on factorization of the spectral density matrix
81
Citations
33
References
2013
Year
Spectral Density MatrixTime Series EconometricsCausal InferenceDifferent SubsetsMultivariate Granger CausalityMultivariate FrameworkNeurologyIndependent Component AnalysisPublic HealthStatisticsCausal ModelEconomicsGranger CausalityNeuroinformaticsMultidimensional AnalysisNeuroimagingCausal ReasoningBrain ImagingFunctional Data AnalysisFinanceComputational NeuroscienceEeg Signal ProcessingEstimation FrameworkBusinessEconometricsNeuroscienceCausalityMultivariate Analysis
Granger causality is increasingly being applied to multi-electrode neurophysiological and functional imaging data to characterize directional interactions between neurons and brain regions. For a multivariate dataset, one might be interested in different subsets of the recorded neurons or brain regions. According to the current estimation framework, for each subset, one conducts a separate autoregressive model fitting process, introducing the potential for unwanted variability and uncertainty. In this paper, we propose a multivariate framework for estimating Granger causality. It is based on spectral density matrix factorization and offers the advantage that the estimation of such a matrix needs to be done only once for the entire multivariate dataset. For any subset of recorded data, Granger causality can be calculated through factorizing the appropriate submatrix of the overall spectral density matrix.
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