We present an approach for the quantification of directional relations in multiple time series exhibiting significant zero-lag interactions. To overcome the limitations of the traditional multivariate autoregressive (MVAR) modelling of multiple series, we introduce an extended MVAR (eMVAR) framework allowing either exclusive consideration of time-lagged effects according to the classic notion of Granger causality, or consideration of combined instantaneous and lagged effects according to an extended causality definition. The spectral representation of the eMVAR model is exploited to derive novel frequency domain causality measures that generalize to the case of instantaneous effects the known directed coherence (DC) and partial DC measures....
The partial directed coherence (PDC) is commonly used to assess in the frequency domain the existenc...
We present a new approach for the investigation of Granger causality in the frequency domain by mean...
We introduce a new hypothesis-testing framework, based on surrogate data generation, to assess in th...
We present an approach for the quantification of directional relations in multiple time series exhib...
We present an approach for the quantification of directional relations in multiple time series exhib...
We present an approach for the quantification of directional relations in multiple time series exhib...
This paper deals with the assessment of frequency domain causality in multivariate (MV) time series ...
This paper deals with the assessment of frequency domain causality in multivariate (MV) time series ...
This paper deals with the assessment of frequency domain causality in multivariate (MV) time series ...
Background: The partial directed coherence (PDC) is commonly used to assess in the frequency domain ...
Background: The partial directed coherence (PDC) is commonly used to assess in the frequency domain ...
The Partial Directed Coherence (PDC) and its generalized formulation (gPDC) are popular tools for in...
The Partial Directed Coherence (PDC) and its generalized formulation (gPDC) are popular tools for in...
We present a new approach for the investigation of Granger causality in the frequency domain by mean...
We present a new approach for the investigation of Granger causality in the frequency domain by mean...
The partial directed coherence (PDC) is commonly used to assess in the frequency domain the existenc...
We present a new approach for the investigation of Granger causality in the frequency domain by mean...
We introduce a new hypothesis-testing framework, based on surrogate data generation, to assess in th...
We present an approach for the quantification of directional relations in multiple time series exhib...
We present an approach for the quantification of directional relations in multiple time series exhib...
We present an approach for the quantification of directional relations in multiple time series exhib...
This paper deals with the assessment of frequency domain causality in multivariate (MV) time series ...
This paper deals with the assessment of frequency domain causality in multivariate (MV) time series ...
This paper deals with the assessment of frequency domain causality in multivariate (MV) time series ...
Background: The partial directed coherence (PDC) is commonly used to assess in the frequency domain ...
Background: The partial directed coherence (PDC) is commonly used to assess in the frequency domain ...
The Partial Directed Coherence (PDC) and its generalized formulation (gPDC) are popular tools for in...
The Partial Directed Coherence (PDC) and its generalized formulation (gPDC) are popular tools for in...
We present a new approach for the investigation of Granger causality in the frequency domain by mean...
We present a new approach for the investigation of Granger causality in the frequency domain by mean...
The partial directed coherence (PDC) is commonly used to assess in the frequency domain the existenc...
We present a new approach for the investigation of Granger causality in the frequency domain by mean...
We introduce a new hypothesis-testing framework, based on surrogate data generation, to assess in th...