We consider the problem of estimating time-localized cross-dependence in a collection of nonstationary signals. To this end, we develop the multivariate locally stationary wavelet framework, which provides a time-scale decomposition of the signals and, thus, naturally captures the time-evolving scale-specific cross-dependence between components of the signals. Under the proposed model, we rigorously define and estimate two forms of cross-dependence measures: wavelet coherence and wavelet partial coherence. These dependence measures differ in a subtle but important way. The former is a broad measure of dependence, which may include indirect associations, i.e., dependence between a pair of signals that is driven by another signal. Conversely,...
Wavelets provide the flexibility to analyse stochastic processes at different scales. Here, we apply...
Objective: A major challenge in non-stationary signal analysis is reliable estimation of correlation...
This thesis proposes novel methods for the modelling of multivariate time series. The work presented...
Large volumes of neuroscience data comprise multiple, nonstationary electrophysiological or neuroima...
Wavelet analysis has become an emerging method in a wide range of applications with non-stationary d...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
Coherence is a widely used measure for characterizing linear dependence between two time series. Cla...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
Coherence is a widely used measure for characterizing linear dependence between a pair of signals. F...
Coherence is one common metric for cross-dependence in multichannel signals. However, standard coher...
The coherence function measures the correlation between a pair of random processes in the frequency ...
Very recently, the locally stationary wavelet framework has provided a means to describe the depende...
This paper describes the R package mvLSW. The package contains a suite of tools for the analysis of ...
Various time-frequency methods have been used to study time-varying properties of non-stationary neu...
Wavelets provide the flexibility to analyse stochastic processes at different scales. Here, we apply...
Objective: A major challenge in non-stationary signal analysis is reliable estimation of correlation...
This thesis proposes novel methods for the modelling of multivariate time series. The work presented...
Large volumes of neuroscience data comprise multiple, nonstationary electrophysiological or neuroima...
Wavelet analysis has become an emerging method in a wide range of applications with non-stationary d...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
Coherence is a widely used measure for characterizing linear dependence between two time series. Cla...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
Coherence is a widely used measure for characterizing linear dependence between a pair of signals. F...
Coherence is one common metric for cross-dependence in multichannel signals. However, standard coher...
The coherence function measures the correlation between a pair of random processes in the frequency ...
Very recently, the locally stationary wavelet framework has provided a means to describe the depende...
This paper describes the R package mvLSW. The package contains a suite of tools for the analysis of ...
Various time-frequency methods have been used to study time-varying properties of non-stationary neu...
Wavelets provide the flexibility to analyse stochastic processes at different scales. Here, we apply...
Objective: A major challenge in non-stationary signal analysis is reliable estimation of correlation...
This thesis proposes novel methods for the modelling of multivariate time series. The work presented...