Several interesting applications in areas such as neuroscience, economics, finance and seismology have led to the collection nonstationary time series data wherein the statistical properties of the observed process change across time. The analysis of nonstationary time series data is an important and challenging task with useful applications. In comparison to stationarity, modeling temporal dependence in nonstationary time series is more non-trivial, and numerous methods have been proposed to tackle this problem. Stationarity in time series is more coveted than nonstationarity and many of the existing techniques attempt to transform the problem of nonstationarity to a stationary time series setting. Change point detection is one such meth...
International audienceThis paper tackles the problem of detecting nonstationary events in a signal. ...
High dimension complex dynamical systems, such as those found in physiological processes, produce ti...
An important problem in time series analysis is the discrimination between non-stationarity and long...
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...
<p>Detecting change points in multivariate time series is an important problem with numerous applica...
This thesis deals with the problem of modeling an univariate nonstationary time series by a set of ...
This thesis deals with the problem of modeling an univariate nonstationary time series by a set of ...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
This paper studies how to detect structural change characterized by a shift in persistence of a time...
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...
This paper proposes a new framework to analyze the nonstationarity in the time series of state densi...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
International audienceThis paper tackles the problem of detecting nonstationary events in a signal. ...
High dimension complex dynamical systems, such as those found in physiological processes, produce ti...
An important problem in time series analysis is the discrimination between non-stationarity and long...
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...
<p>Detecting change points in multivariate time series is an important problem with numerous applica...
This thesis deals with the problem of modeling an univariate nonstationary time series by a set of ...
This thesis deals with the problem of modeling an univariate nonstationary time series by a set of ...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
This paper studies how to detect structural change characterized by a shift in persistence of a time...
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...
This paper proposes a new framework to analyze the nonstationarity in the time series of state densi...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
We analyse the properties of nonparametric spectral estimates when applied to long memory and trendi...
International audienceThis paper tackles the problem of detecting nonstationary events in a signal. ...
High dimension complex dynamical systems, such as those found in physiological processes, produce ti...
An important problem in time series analysis is the discrimination between non-stationarity and long...