For the class of stationary Gaussian long memory processes, we study some properties of the least-squares predictor of X_{n+1} based on (X_n, ..., X_1). The predictor is obtained by projecting X_{n+1} onto the finite past and the coefficients of the predictor are estimated on the same realisation. First we prove moment bounds for the inverse of the empirical covariance matrix. Then we deduce an asymptotic expression of the mean-squared error. In particular we give a relation between the number of terms used to estimate the coefficients and the number of past terms used for prediction, which ensures the L^2-sense convergence of the predictor. Finally we prove a central limit theorem when our predictor converges to the best linear predictor b...
In this paper, we derive some of the stochastic prop-erties of a universal linear predictor, through...
ESSEC Working paper. Document de recherche de l'ESSEC / ISSN : 1291-9616 WP1113 Updated October 2013...
Consistency, asymptotic normality and e ciency of the maximum likelihood estimator for stationary Ga...
We present two approaches for linear prediction of long-memory time series. The first approach consi...
International audienceWe present two approaches for linear prediction of long-memory time series. Th...
This PhD thesis deals with predicting long-memory processes. We assume that the processes are weakly...
January 2004; revised September 2006This paper is based on a portion of Chapter 3 of the author's Ph...
We present an example of stationary process with long-time memory for which we can calculate explici...
We consider the problem of one-step ahead prediction of a real-valued, stationary, strongly mixing r...
[[abstract]]We develop an asymptotic theory for the first two sample moments of a stationary multiva...
Let observations come from an infinite-order autoregressive (AR) process. For predicting the future ...
Dans cette thèse, on considère deux types de processus longues mémoires : les processus stationnaire...
AbstractLet observations come from an infinite-order autoregressive (AR) process. For predicting the...
Linear prediction theory for multivariate, one- dimensional, stationary, stochastic processes with f...
AbstractIt is shown that the finite linear least-squares predictor of a multivariate stationary proc...
In this paper, we derive some of the stochastic prop-erties of a universal linear predictor, through...
ESSEC Working paper. Document de recherche de l'ESSEC / ISSN : 1291-9616 WP1113 Updated October 2013...
Consistency, asymptotic normality and e ciency of the maximum likelihood estimator for stationary Ga...
We present two approaches for linear prediction of long-memory time series. The first approach consi...
International audienceWe present two approaches for linear prediction of long-memory time series. Th...
This PhD thesis deals with predicting long-memory processes. We assume that the processes are weakly...
January 2004; revised September 2006This paper is based on a portion of Chapter 3 of the author's Ph...
We present an example of stationary process with long-time memory for which we can calculate explici...
We consider the problem of one-step ahead prediction of a real-valued, stationary, strongly mixing r...
[[abstract]]We develop an asymptotic theory for the first two sample moments of a stationary multiva...
Let observations come from an infinite-order autoregressive (AR) process. For predicting the future ...
Dans cette thèse, on considère deux types de processus longues mémoires : les processus stationnaire...
AbstractLet observations come from an infinite-order autoregressive (AR) process. For predicting the...
Linear prediction theory for multivariate, one- dimensional, stationary, stochastic processes with f...
AbstractIt is shown that the finite linear least-squares predictor of a multivariate stationary proc...
In this paper, we derive some of the stochastic prop-erties of a universal linear predictor, through...
ESSEC Working paper. Document de recherche de l'ESSEC / ISSN : 1291-9616 WP1113 Updated October 2013...
Consistency, asymptotic normality and e ciency of the maximum likelihood estimator for stationary Ga...