Over recent decades increasingly more attention has been paid to the problem of how to fit a parametric model of time series with time-varying parameters. A typical example is given by autoregressive models with time-varying parameters. We propose a procedure to fit such time-varying models to general non-stationary processes. The estimator is a maximum Whittle likelihood estimator on sieves. The results do not assume that the observed process belongs to a specific class of time varying parametric models. We discuss in more detail the fitting of time-varying AR(p) processes for which we treat the problem of the selection of the order p, and we propose an iterative algorithm for the computation of the estimator. A comparison with model selec...
In this paper, we consider the estimation of time-varying ARMA models subject to Markovian changes i...
We study semiparametric inference in some linear regression models with time-varying coefficients, d...
in pressInternational audienceWe develop a complete methodology for detecting time varying or non-ti...
A general minimum distance estimation procedure is presented fornonstationary time series models tha...
The problem of fitting a parametric model of time series with time varying pa-rameters attracts our ...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
Stationary processes have been extensively studied in the literature. Their applications include mod...
In this paper we consider the issues involved in model order selection for processes observed with a...
The problem of maximum likelihood estimation of time-varying parameters is considered. A hierarchica...
Many time series in applied sciences obey a time-varying spectral structure. In this article, we foc...
We present a family of autoregressive models with nonparametric stationary and transition densities,...
We study the estimation problem of the parameter of a stationary AR(p) process with infinite varianc...
Stationary processes are a natural choice as statistical models for time series data, owing to their...
Many time series in applied sciences obey a time-varying spectral structure. In this article, we foc...
International audienceThis paper studies the problem of model selection in a large class of causal t...
In this paper, we consider the estimation of time-varying ARMA models subject to Markovian changes i...
We study semiparametric inference in some linear regression models with time-varying coefficients, d...
in pressInternational audienceWe develop a complete methodology for detecting time varying or non-ti...
A general minimum distance estimation procedure is presented fornonstationary time series models tha...
The problem of fitting a parametric model of time series with time varying pa-rameters attracts our ...
In time series analysis, most of the models are based on the assumption of covariance stationarity. ...
Stationary processes have been extensively studied in the literature. Their applications include mod...
In this paper we consider the issues involved in model order selection for processes observed with a...
The problem of maximum likelihood estimation of time-varying parameters is considered. A hierarchica...
Many time series in applied sciences obey a time-varying spectral structure. In this article, we foc...
We present a family of autoregressive models with nonparametric stationary and transition densities,...
We study the estimation problem of the parameter of a stationary AR(p) process with infinite varianc...
Stationary processes are a natural choice as statistical models for time series data, owing to their...
Many time series in applied sciences obey a time-varying spectral structure. In this article, we foc...
International audienceThis paper studies the problem of model selection in a large class of causal t...
In this paper, we consider the estimation of time-varying ARMA models subject to Markovian changes i...
We study semiparametric inference in some linear regression models with time-varying coefficients, d...
in pressInternational audienceWe develop a complete methodology for detecting time varying or non-ti...