We present two approaches for linear prediction of long-memory time series. The first approach consists in truncating the Wiener-Kolmogorov predictor by restricting the observations to the last k terms, which are the only available data in practice. We derive the asymptotic behaviour of the mean-squared error as k tends to +∞. The second predictor is the finite linear least-squares predictor i.e. the projection of the forecast value on the last k observations. It is shown that these two predictors converge to the Wiener Kolmogorov predictor at the same rate k-1
This chapter reviews semiparametric methods of inference on different aspects of long memory time s...
A central limit theorem is established for time series regression estimates which include generalize...
AbstractWe consider a general long memory time series, assumed stationary and linear, but not necess...
International audienceWe present two approaches for linear prediction of long-memory time series. Th...
We present two approaches for linear prediction of long-memory time series. The first approach consi...
This PhD thesis deals with predicting long-memory processes. We assume that the processes are weakly...
For the class of stationary Gaussian long memory processes, we study some properties of the least-sq...
We frequently observe that one of the aims of time series analysts is to predict future values of th...
International audienceTwo recent contributions have found conditions for large dimensional networks ...
January 2004; revised September 2006This paper is based on a portion of Chapter 3 of the author's Ph...
We consider nonparametric prediction problem for both short- and long-range de-pendent linear proces...
The linear theory of prediction is capable of performing long term forecasting when the observed tim...
AbstractIt is shown that the finite linear least-squares predictor of a multivariate stationary proc...
We consider a general long memory time series, assumed stationary and linear, but not necessarily Ga...
In this paper, an Optimally Pruned Extreme Learning Machine (OP-ELM) is ap-plied to the problem of l...
This chapter reviews semiparametric methods of inference on different aspects of long memory time s...
A central limit theorem is established for time series regression estimates which include generalize...
AbstractWe consider a general long memory time series, assumed stationary and linear, but not necess...
International audienceWe present two approaches for linear prediction of long-memory time series. Th...
We present two approaches for linear prediction of long-memory time series. The first approach consi...
This PhD thesis deals with predicting long-memory processes. We assume that the processes are weakly...
For the class of stationary Gaussian long memory processes, we study some properties of the least-sq...
We frequently observe that one of the aims of time series analysts is to predict future values of th...
International audienceTwo recent contributions have found conditions for large dimensional networks ...
January 2004; revised September 2006This paper is based on a portion of Chapter 3 of the author's Ph...
We consider nonparametric prediction problem for both short- and long-range de-pendent linear proces...
The linear theory of prediction is capable of performing long term forecasting when the observed tim...
AbstractIt is shown that the finite linear least-squares predictor of a multivariate stationary proc...
We consider a general long memory time series, assumed stationary and linear, but not necessarily Ga...
In this paper, an Optimally Pruned Extreme Learning Machine (OP-ELM) is ap-plied to the problem of l...
This chapter reviews semiparametric methods of inference on different aspects of long memory time s...
A central limit theorem is established for time series regression estimates which include generalize...
AbstractWe consider a general long memory time series, assumed stationary and linear, but not necess...