Large volumes of neuroscience data comprise multiple, nonstationary electrophysiological or neuroimaging time series recorded from different brain regions. Accurately estimating the dependence between such neural time series is critical, since changes in the dependence structure are presumed to reflect functional interactions between neuronal populations. We propose a new dependence measure, derived from a bivariate locally stationary wavelet time series model. Since wavelets are localized in both time and scale, this approach leads to a natural, local and multi-scale estimate of nonstationary dependence. Our methodology is illustrated by application to a simulated example, and to electrophysiological data relating to interactions between t...
Functional Magnetic Resonance Imaging (fMRI) is a dynamic four-dimensional imaging modality. However...
ABSTRACT We describe and illustrate Bayesian approaches to modelling and analysis of multiple non-st...
This article reviews the role of wavelets in statistical time series analysis. We survey work that e...
Large volumes of neuroscience data comprise multiple, nonstationary electrophysiological or neuroima...
We consider the problem of estimating time-localized cross-dependence in a collection of nonstationa...
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...
Very recently, the locally stationary wavelet framework has provided a means to describe the depende...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
International audienceIn the general setting of long-memory multivariate time series, the long-memor...
Conference PaperWe develop two new multivariate statistical dependence measures. The first, based on...
Coherence is one common metric for cross-dependence in multichannel signals. However, standard coher...
International audienceMultivariate processes with long-range dependent properties are found in a lar...
Wavelets provide the flexibility to analyse stochastic processes at different scales. Here, we apply...
Functional Magnetic Resonance Imaging (fMRI) is a dynamic four-dimensional imaging modality. However...
ABSTRACT We describe and illustrate Bayesian approaches to modelling and analysis of multiple non-st...
This article reviews the role of wavelets in statistical time series analysis. We survey work that e...
Large volumes of neuroscience data comprise multiple, nonstationary electrophysiological or neuroima...
We consider the problem of estimating time-localized cross-dependence in a collection of nonstationa...
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...
Very recently, the locally stationary wavelet framework has provided a means to describe the depende...
The study of the correlations that may exist between neurophysiological signals is at the heart of m...
International audienceIn the general setting of long-memory multivariate time series, the long-memor...
Conference PaperWe develop two new multivariate statistical dependence measures. The first, based on...
Coherence is one common metric for cross-dependence in multichannel signals. However, standard coher...
International audienceMultivariate processes with long-range dependent properties are found in a lar...
Wavelets provide the flexibility to analyse stochastic processes at different scales. Here, we apply...
Functional Magnetic Resonance Imaging (fMRI) is a dynamic four-dimensional imaging modality. However...
ABSTRACT We describe and illustrate Bayesian approaches to modelling and analysis of multiple non-st...
This article reviews the role of wavelets in statistical time series analysis. We survey work that e...