This paper studies estimation of covariance matrices with conditional sparse structure. We overcome the challenge of estimating dense matrices using a factor structure, the challenge of estimating large-dimensional matrices by postulating sparsity on covariance of random noises, and the challenge of estimating varying matrices by allowing factor loadings to smoothly change. A kernel-weighted estimation approach combined with generalised shrinkage is proposed. Under some technical conditions, we derive uniform consistency for the developed estimation method and obtain convergence rates. Numerical studies including simulation and an empirical application are presented to examine the finite-sample performance of the developed methodology
While most of the convergence results in the literature on high dimensional covari-ance matrix are c...
This paper proposes a regularisation method for the estimation of large covariance matrices that use...
We study the estimation of a high dimensional approximate factor model in the presence of both cross...
This paper studies estimation of covariance matrices with conditional sparse structure. We overcome ...
This paper deals with estimation of high-dimensional covariance with a conditional sparsity structur...
This paper studies the sparsistency and rates of convergence for estimating sparse covariance and pr...
This paper deals with the estimation of a high-dimensional covariance with a con-ditional sparsity s...
We develop a theory of covariance and concentration matrix estimation on any given or estimated spar...
We propose a “NOVEL Integration of the Sample and Thresholded covariance estimators” (NOVELIST) to e...
Estimation of covariate-dependent conditional covariance matrix in a high-dimensional space poses a ...
High-dimensional statistical tests often ignore correlations to gain simplicity and stability leadin...
This paper studies the estimation of large dynamic covariance matrices with multiple conditioning va...
Dynamic covariance estimation for multivariate time series suffers from the curse of dimensionality....
The present paper concerns large covariance matrix estimation via composite minimization under the ...
We study the estimation of a high dimensional approximate factor model in the presence of both cross...
While most of the convergence results in the literature on high dimensional covari-ance matrix are c...
This paper proposes a regularisation method for the estimation of large covariance matrices that use...
We study the estimation of a high dimensional approximate factor model in the presence of both cross...
This paper studies estimation of covariance matrices with conditional sparse structure. We overcome ...
This paper deals with estimation of high-dimensional covariance with a conditional sparsity structur...
This paper studies the sparsistency and rates of convergence for estimating sparse covariance and pr...
This paper deals with the estimation of a high-dimensional covariance with a con-ditional sparsity s...
We develop a theory of covariance and concentration matrix estimation on any given or estimated spar...
We propose a “NOVEL Integration of the Sample and Thresholded covariance estimators” (NOVELIST) to e...
Estimation of covariate-dependent conditional covariance matrix in a high-dimensional space poses a ...
High-dimensional statistical tests often ignore correlations to gain simplicity and stability leadin...
This paper studies the estimation of large dynamic covariance matrices with multiple conditioning va...
Dynamic covariance estimation for multivariate time series suffers from the curse of dimensionality....
The present paper concerns large covariance matrix estimation via composite minimization under the ...
We study the estimation of a high dimensional approximate factor model in the presence of both cross...
While most of the convergence results in the literature on high dimensional covari-ance matrix are c...
This paper proposes a regularisation method for the estimation of large covariance matrices that use...
We study the estimation of a high dimensional approximate factor model in the presence of both cross...