By design a wavelet's strength rests in its ability to localize a process simultaneously in time-scalespace. The wavelet's ability to localize a time series in time-scale space directly leads to the computationalefficiency of the wavelet representation of a N £ N matrix operator by allowing the N largest elements of thewavelet represented operator to represent the matrix operator [Devore, et al. (1992a) and (1992b)]. Thisproperty allows many dense matrices to have sparse representation when transformed by wavelets.In this paper we generalize the long-memory parameter estimator of McCoy and Walden (1996) to estimatesimultaneously the short and long-memory parameters. Using the sparse wavelet representation of a matrixoperator, we are able to...
The objective of this dissertation is to study ways of modeling a long memory process using wavelet ...
In the general setting of long-memory multivariate time series, the long-memory characteristics are ...
There exists a wide literature on parametrically or semi-parametrically modelling strongly dependent...
In this paper we apply compactly supported wavelets to the ARFIMA(p,d,q) long-memory process to deve...
There are a number of estimators of a long-memory process’ long-memory parameter when the parameter ...
We propose new wavelet-based procedure to estimate the memory parameter of an unobserved process fro...
This paper compares several estimators for estimating the long memory parameter d in ARFIMA model. W...
[[abstract]]This article presents a novel long-memory wavelet model for approximating a stationary l...
We study the problem of constructing confidence intervals for the long-memory parameter of stationar...
ACL-3International audienceIn this article, we propose two new semiparametric estimators in the wave...
The theme of our work focuses on statistical process long memory, for which we propose and validate ...
Long memory models have received a significant amount of attention in the theoretical literature as ...
In this paper, we examine the finite-sample properties of the approximate maximum likelihood estimat...
The objective of this dissertation is to study ways of modeling a long memory process using wavelet ...
In the general setting of long-memory multivariate time series, the long-memory characteristics are ...
There exists a wide literature on parametrically or semi-parametrically modelling strongly dependent...
In this paper we apply compactly supported wavelets to the ARFIMA(p,d,q) long-memory process to deve...
There are a number of estimators of a long-memory process’ long-memory parameter when the parameter ...
We propose new wavelet-based procedure to estimate the memory parameter of an unobserved process fro...
This paper compares several estimators for estimating the long memory parameter d in ARFIMA model. W...
[[abstract]]This article presents a novel long-memory wavelet model for approximating a stationary l...
We study the problem of constructing confidence intervals for the long-memory parameter of stationar...
ACL-3International audienceIn this article, we propose two new semiparametric estimators in the wave...
The theme of our work focuses on statistical process long memory, for which we propose and validate ...
Long memory models have received a significant amount of attention in the theoretical literature as ...
In this paper, we examine the finite-sample properties of the approximate maximum likelihood estimat...
The objective of this dissertation is to study ways of modeling a long memory process using wavelet ...
In the general setting of long-memory multivariate time series, the long-memory characteristics are ...
There exists a wide literature on parametrically or semi-parametrically modelling strongly dependent...