We develop a statistical method for discriminating and classifying multivariate non- stationary signals. It is assumed that the processes that generate the signals are characterized by their time-evolving spectral matrix—a description of the dynamic connectivity between the time series components. Here, we address two major challenges: first, data massiveness and second, the poor conditioning that leads to numerically unstable estimates of the spectral matrix. We use the SLEX library (a collection of bases functions consisting of localized Fourier waveforms) to extract the set of time–frequency features that best separate classes of time series. The SLEX approach yields readily interpretable results since it is a time-dependent analogue of ...
Statistical discrimination for nonstationary random processes is important in many applications. Our...
Time series data obtained from neurophysiological signals is often high-dimensional and the length o...
Time series data obtained from neurophysiological signals is often high-dimensional and the length o...
We develop a statistical method for discriminating and classifying multivariate non-stationary signa...
We propose to analyze a multivariate non-stationary time series using the SLEX (Smooth Localized Com...
We propose to analyze a multivariate non-stationary time series using the SLEX (Smooth Localized Com...
In the dissertation, we propose (i) a new method for analyzing a bivariate non-stationary time serie...
In the dissertation, we propose (i) a new method for analyzing a bivariate non-stationary time serie...
Statistical discrimination for nonstationary random processes have developed into a widely practiced...
This thesis focuses on statistical methods for non-stationary signals. The methods considered or dev...
This thesis focuses on statistical methods for non-stationary signals. The methods considered or dev...
In spectral analysis of high dimensional multivariate time series, it is crucial to obtain an estima...
In this paper, we apply a new time-frequency spectral estimation method for multichannel data to epi...
We propose a new model for non-stationary random processes to represent time series with a time-vary...
We propose a new model for non-stationary random processes to represent time series with a time-vary...
Statistical discrimination for nonstationary random processes is important in many applications. Our...
Time series data obtained from neurophysiological signals is often high-dimensional and the length o...
Time series data obtained from neurophysiological signals is often high-dimensional and the length o...
We develop a statistical method for discriminating and classifying multivariate non-stationary signa...
We propose to analyze a multivariate non-stationary time series using the SLEX (Smooth Localized Com...
We propose to analyze a multivariate non-stationary time series using the SLEX (Smooth Localized Com...
In the dissertation, we propose (i) a new method for analyzing a bivariate non-stationary time serie...
In the dissertation, we propose (i) a new method for analyzing a bivariate non-stationary time serie...
Statistical discrimination for nonstationary random processes have developed into a widely practiced...
This thesis focuses on statistical methods for non-stationary signals. The methods considered or dev...
This thesis focuses on statistical methods for non-stationary signals. The methods considered or dev...
In spectral analysis of high dimensional multivariate time series, it is crucial to obtain an estima...
In this paper, we apply a new time-frequency spectral estimation method for multichannel data to epi...
We propose a new model for non-stationary random processes to represent time series with a time-vary...
We propose a new model for non-stationary random processes to represent time series with a time-vary...
Statistical discrimination for nonstationary random processes is important in many applications. Our...
Time series data obtained from neurophysiological signals is often high-dimensional and the length o...
Time series data obtained from neurophysiological signals is often high-dimensional and the length o...