The main goal of this research is to estimate the model parameters and to detect multiple change points in the long memory parameter of Gaussian ARFIMA(p, d, q) processes. Our approach is Bayesian and inference is done on wavelet domain. Long memory processes have been widely used in many scientific fields such as economics, finance and computer science. Wavelets have a strong connection with these processes. The ability of wavelets to simultaneously localize a process in time and scale domain results in representing many dense variance-covariance matrices of the process in a sparse form. A wavelet-based Bayesian estimation procedure for the parameters of Gaussian ARFIMA(p, d, q) process is proposed. This entails calculati...
International audienceThis paper is first devoted to study an adaptive wavelet based estimator of th...
The objective of this dissertation is to study ways of modeling a long memory process using wavelet ...
By design a wavelet's strength rests in its ability to localize a process simultaneously in time-sca...
The main goal of this research is to estimate the model parameters and to detect multiple change poi...
Long memory processes are widely used in many scientific fields, such as economics, physics, and eng...
A Bayesian wavelet estimation method for estimating parameters of a stationary I(d) process is repre...
A Bayesian wavelet estimation method for estimating parameters of a stationary I(d) process is repre...
The objective of this dissertation is to develop a suitable statistical methodology for parameter es...
In this paper we apply compactly supported wavelets to the ARFIMA(p,d,q) long-memory process to deve...
In this paper we focus on partially linear regression models with long memory errors, and propose a ...
The theme of our work focuses on statistical process long memory, for which we propose and validate ...
This paper compares several estimators for estimating the long memory parameter d in ARFIMA model. W...
DOI:10.1214/09-BA406We develop a Bayesian procedure for analyzing stationary long-range dependent pr...
There are a number of estimators of a long-memory process’ long-memory parameter when the parameter ...
This article considers linear regression models with long memory errors. These models have been prov...
International audienceThis paper is first devoted to study an adaptive wavelet based estimator of th...
The objective of this dissertation is to study ways of modeling a long memory process using wavelet ...
By design a wavelet's strength rests in its ability to localize a process simultaneously in time-sca...
The main goal of this research is to estimate the model parameters and to detect multiple change poi...
Long memory processes are widely used in many scientific fields, such as economics, physics, and eng...
A Bayesian wavelet estimation method for estimating parameters of a stationary I(d) process is repre...
A Bayesian wavelet estimation method for estimating parameters of a stationary I(d) process is repre...
The objective of this dissertation is to develop a suitable statistical methodology for parameter es...
In this paper we apply compactly supported wavelets to the ARFIMA(p,d,q) long-memory process to deve...
In this paper we focus on partially linear regression models with long memory errors, and propose a ...
The theme of our work focuses on statistical process long memory, for which we propose and validate ...
This paper compares several estimators for estimating the long memory parameter d in ARFIMA model. W...
DOI:10.1214/09-BA406We develop a Bayesian procedure for analyzing stationary long-range dependent pr...
There are a number of estimators of a long-memory process’ long-memory parameter when the parameter ...
This article considers linear regression models with long memory errors. These models have been prov...
International audienceThis paper is first devoted to study an adaptive wavelet based estimator of th...
The objective of this dissertation is to study ways of modeling a long memory process using wavelet ...
By design a wavelet's strength rests in its ability to localize a process simultaneously in time-sca...