In this paper we apply compactly supported wavelets to the ARFIMA(p,d,q) long-memory process to develop an alternative maximum likelihood estimator of the differencing parameter, d, that is invariant to the unknown mean and model specification, and to the level of contamination. We show that this class of time series have wavelet transforms who's covariance matrix is sparse when the wavelet is compactly supported. It is shown that the sparse covariance matrix can be approximated to a high level of precision by a matix equal to the covariance amtrix except with the off-diagonal elements set to zero. This diagonal matrix is shown to reduce the order of calculating the likelihood function to an order smaller than those associated with the exac...
Long memory models have received a significant amount of attention in the theoretical literature as ...
We study the problem of constructing confidence intervals for the long-memory parameter of stationar...
There exists a wide literature on parametrically or semi-parametrically modelling strongly dependent...
By design a wavelet's strength rests in its ability to localize a process simultaneously in time-sca...
In this paper, we examine the finite-sample properties of the approximate maximum likelihood estimat...
This paper compares several estimators for estimating the long memory parameter d in ARFIMA model. W...
February 2013We consider the model for the discrete nonboundary wavelet coefficients of ARFIMA proce...
The main goal of this research is to estimate the model parameters and to detect multiple change poi...
ACL-3International audienceIn this article, we propose two new semiparametric estimators in the wave...
In this article we study function estimation via wavelet shrinkage for data with long-range dependen...
The theme of our work focuses on statistical process long memory, for which we propose and validate ...
[[abstract]]This article presents a novel long-memory wavelet model for approximating a stationary l...
We propose new wavelet-based procedure to estimate the memory parameter of an unobserved process fro...
There are a number of estimators of a long-memory process’ long-memory parameter when the parameter ...
In the general setting of long-memory multivariate time series, the long-memory characteristics are ...
Long memory models have received a significant amount of attention in the theoretical literature as ...
We study the problem of constructing confidence intervals for the long-memory parameter of stationar...
There exists a wide literature on parametrically or semi-parametrically modelling strongly dependent...
By design a wavelet's strength rests in its ability to localize a process simultaneously in time-sca...
In this paper, we examine the finite-sample properties of the approximate maximum likelihood estimat...
This paper compares several estimators for estimating the long memory parameter d in ARFIMA model. W...
February 2013We consider the model for the discrete nonboundary wavelet coefficients of ARFIMA proce...
The main goal of this research is to estimate the model parameters and to detect multiple change poi...
ACL-3International audienceIn this article, we propose two new semiparametric estimators in the wave...
In this article we study function estimation via wavelet shrinkage for data with long-range dependen...
The theme of our work focuses on statistical process long memory, for which we propose and validate ...
[[abstract]]This article presents a novel long-memory wavelet model for approximating a stationary l...
We propose new wavelet-based procedure to estimate the memory parameter of an unobserved process fro...
There are a number of estimators of a long-memory process’ long-memory parameter when the parameter ...
In the general setting of long-memory multivariate time series, the long-memory characteristics are ...
Long memory models have received a significant amount of attention in the theoretical literature as ...
We study the problem of constructing confidence intervals for the long-memory parameter of stationar...
There exists a wide literature on parametrically or semi-parametrically modelling strongly dependent...