We propose a Kronecker product model for correlation or covariance matrices in the large dimension case. The number of parameters of the model increases logarithmically with the dimension of the matrix. We propose a minimum distance (MD) estimator based on a log-linear property of the model, as well as a one-step estimator, which is a one-step approximation to the quasi-maximum likelihood estimator (QMLE).We establish the rate of convergence and a central limit theorem (CLT) for our estimators in the large dimensional case. A specification test and tools for Kronecker product model selection and inference are provided. In an Monte Carlo study where a Kronecker product model is correctly specified, our estimators exhibit superior performance...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
We propose a Kronecker product model for correlation or covariance matrices in the large dimensional...
We propose a Kronecker product structure for large covariance or correlation matrices. One feature o...
We propose a Kronecker product structure for large covariance or correlation matrices. One feature o...
This paper presents a new method for estimating high dimensional covariance matrices. The method, pe...
In this article we consider a pq-dimensional random vector x distributed normally with mean vector θ...
In this article models based on pq-dimensional normally distributed ran-dom vectors x are studied wi...
Abstract—This paper presents a new method for estimating high dimensional covariance matrices. Our m...
We propose a test for a covariance matrix to have Kronecker Product Structure (KPS). KPS implies a r...
We introduce a class of multiplicative dynamic models for realized covariance matrices assumed to be...
We propose a test for a covariance matrix to have Kronecker Product Structure (KPS). KPS implies a r...
In this work we consider the estimation of spatio-temporal covariance matrices in the low sample non...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
We propose a Kronecker product model for correlation or covariance matrices in the large dimensional...
We propose a Kronecker product structure for large covariance or correlation matrices. One feature o...
We propose a Kronecker product structure for large covariance or correlation matrices. One feature o...
This paper presents a new method for estimating high dimensional covariance matrices. The method, pe...
In this article we consider a pq-dimensional random vector x distributed normally with mean vector θ...
In this article models based on pq-dimensional normally distributed ran-dom vectors x are studied wi...
Abstract—This paper presents a new method for estimating high dimensional covariance matrices. Our m...
We propose a test for a covariance matrix to have Kronecker Product Structure (KPS). KPS implies a r...
We introduce a class of multiplicative dynamic models for realized covariance matrices assumed to be...
We propose a test for a covariance matrix to have Kronecker Product Structure (KPS). KPS implies a r...
In this work we consider the estimation of spatio-temporal covariance matrices in the low sample non...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...
ABSTRACT. This paper discusses a new dynamic model for dealing with large dimensional realized covar...