In the dissertation, we propose (i) a new method for analyzing a bivariate non-stationary time series; (ii) a new span selector for periodogram smoothing and (iii) a new model of a non-stationary random process. The dissertation was motivated by the need of neurologists to study changes in the electrical activity of the brain during an epileptic seizure. This can be directly approached by estimating the time-varying spectra and coherence of electroencephalograms (EEGs) or brain waves that are recorded during an epileptic seizure. The proposed method is a statistical procedure that automatically segments the time series into approximately stationary blocks and automatically computes the span for obtaining smoothed estimates of the time-va...
<p>This article introduces a nonparametric approach to multivariate time-varying power spectrum anal...
Several interesting applications in areas such as neuroscience, economics, finance and seismology ha...
Several interesting applications in areas such as neuroscience, economics, finance and seismology ha...
In the dissertation, we propose (i) a new method for analyzing a bivariate non-stationary time serie...
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...
We develop a statistical method for discriminating and classifying multivariate non- stationary sign...
We develop a statistical method for discriminating and classifying multivariate non-stationary signa...
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...
Statistical discrimination for nonstationary random processes have developed into a widely practiced...
We propose a new model for non-stationary random processes to represent time series with a time-vary...
In this paper, a locally stationary process is proposed using a Smooth Localized Complex Ex- ponenti...
In this article we propose a smoothing spline ANOVA model (SS-ANOVA) to estimate and to make inferen...
Spectral Analysis of Multivariate Time Series has been an active field of methodological and applied...
<p>This article introduces a nonparametric approach to multivariate time-varying power spectrum anal...
Several interesting applications in areas such as neuroscience, economics, finance and seismology ha...
Several interesting applications in areas such as neuroscience, economics, finance and seismology ha...
In the dissertation, we propose (i) a new method for analyzing a bivariate non-stationary time serie...
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...
We develop a statistical method for discriminating and classifying multivariate non- stationary sign...
We develop a statistical method for discriminating and classifying multivariate non-stationary signa...
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...
Statistical discrimination for nonstationary random processes have developed into a widely practiced...
We propose a new model for non-stationary random processes to represent time series with a time-vary...
In this paper, a locally stationary process is proposed using a Smooth Localized Complex Ex- ponenti...
In this article we propose a smoothing spline ANOVA model (SS-ANOVA) to estimate and to make inferen...
Spectral Analysis of Multivariate Time Series has been an active field of methodological and applied...
<p>This article introduces a nonparametric approach to multivariate time-varying power spectrum anal...
Several interesting applications in areas such as neuroscience, economics, finance and seismology ha...
Several interesting applications in areas such as neuroscience, economics, finance and seismology ha...