A fundamental problem in multivariate statistics is the estimation of covariance matrices. We consider in this paper a flexible class of nonparametric covariance models for which the entries in the covariance matrix depend on covariates. Although it is well known that local linear estimation is much preferred over local constant estimation (Fan & Gijbels, 1996), developing the former for estimating covariance matrices is challenging due to the positive definiteness constraint of such matrices. Motivated by the modified Cholesky decomposition, we propose for the first time a local linear estimator of the nonparametric covariance matrix. The proposed estimator is positive definite, is adaptive, possesses good theoretical properties and perfor...
When the selected parametric model for the covariance structure is far from the true one, the corres...
This paper discusses a method for estimating the covariance matrix of a multivariate stationary proc...
The major difficulties in estimating a large covariance matrix are the high dimen-sionality and the ...
This paper studies the estimation of a large covariance matrix. We introduce a novel procedure calle...
A method for simultaneous modelling of the Cholesky decomposition of several covariance ma-trices is...
Abstract In this paper, we study the problem of estimating a multivariate nor-mal covariance matrix ...
This article proposes a data-driven method to identify parsimony in the covariance matrix of longit...
Estimating large covariance matrices from small samples is an important problem in many fields. Amon...
We propose new regression models for parameterizing covariance structures in longitudinal data analy...
This thesis focuses on the problem of estimating parameters in multivariate linear models where part...
Covariance estimation for high-dimensional datasets is a fundamental problem in machine learning, an...
This paper develops a new estimation of nonparametric regression functions for clustered or longitud...
We propose a simple forward adaptive banding method for estimating large covariance matrices using t...
Many testing, estimation and confidence interval procedures discussed in the multivariate statistica...
AbstractA method for simultaneous modelling of the Cholesky decomposition of several covariance matr...
When the selected parametric model for the covariance structure is far from the true one, the corres...
This paper discusses a method for estimating the covariance matrix of a multivariate stationary proc...
The major difficulties in estimating a large covariance matrix are the high dimen-sionality and the ...
This paper studies the estimation of a large covariance matrix. We introduce a novel procedure calle...
A method for simultaneous modelling of the Cholesky decomposition of several covariance ma-trices is...
Abstract In this paper, we study the problem of estimating a multivariate nor-mal covariance matrix ...
This article proposes a data-driven method to identify parsimony in the covariance matrix of longit...
Estimating large covariance matrices from small samples is an important problem in many fields. Amon...
We propose new regression models for parameterizing covariance structures in longitudinal data analy...
This thesis focuses on the problem of estimating parameters in multivariate linear models where part...
Covariance estimation for high-dimensional datasets is a fundamental problem in machine learning, an...
This paper develops a new estimation of nonparametric regression functions for clustered or longitud...
We propose a simple forward adaptive banding method for estimating large covariance matrices using t...
Many testing, estimation and confidence interval procedures discussed in the multivariate statistica...
AbstractA method for simultaneous modelling of the Cholesky decomposition of several covariance matr...
When the selected parametric model for the covariance structure is far from the true one, the corres...
This paper discusses a method for estimating the covariance matrix of a multivariate stationary proc...
The major difficulties in estimating a large covariance matrix are the high dimen-sionality and the ...