This paper deals with the problem of estimating the covariance matrix of the least-squares regression coefficients under heteroskedasticity and/or autocorrelation of unknown form. We consider an estimator proposed by White [17] and give a relatively simple proof of its consistency. Our proof is based on more easily verifiable conditions than those of White. An alternative estimator with improved small sample properties is also presented.
The authors propose a nonparametric method for automatically selecting the number of autocovariances...
AbstractIn this paper, we propose a framework of outer product least squares for covariance (COPLS) ...
It is well known that the ordinary least squares (OLS) estimates in the regression model are efficie...
This paper is concerned with the estimation of covariance matrices in the presence of heteroskedasti...
The performance of the Newey and West (1987) heteroscedasticity and autocorrelation consistent covar...
Abstract: The proliferation of panel studies which has been greatly motivated by the availability of...
AbstractWe consider the problem of estimating regression models of two-dimensional random fields. As...
This thesis considers the problem of estimation in the presence of heteroskedasticity of unknown for...
summary:The least squres invariant quadratic estimator of an unknown covariance function of a stocha...
summary:The least squres invariant quadratic estimator of an unknown covariance function of a stocha...
It is straightforward that breaking the orthogonality condition implies biased and inconsistent esti...
summary:The least squres invariant quadratic estimator of an unknown covariance function of a stocha...
Linear regression model, Covariance matrix, Elliptically symmetric distribution, Generalized least s...
Many testing, estimation and confidence interval procedures discussed in the multivariate statistica...
This study evaluates estimators of the regression coefficients in the linear model, where the distur...
The authors propose a nonparametric method for automatically selecting the number of autocovariances...
AbstractIn this paper, we propose a framework of outer product least squares for covariance (COPLS) ...
It is well known that the ordinary least squares (OLS) estimates in the regression model are efficie...
This paper is concerned with the estimation of covariance matrices in the presence of heteroskedasti...
The performance of the Newey and West (1987) heteroscedasticity and autocorrelation consistent covar...
Abstract: The proliferation of panel studies which has been greatly motivated by the availability of...
AbstractWe consider the problem of estimating regression models of two-dimensional random fields. As...
This thesis considers the problem of estimation in the presence of heteroskedasticity of unknown for...
summary:The least squres invariant quadratic estimator of an unknown covariance function of a stocha...
summary:The least squres invariant quadratic estimator of an unknown covariance function of a stocha...
It is straightforward that breaking the orthogonality condition implies biased and inconsistent esti...
summary:The least squres invariant quadratic estimator of an unknown covariance function of a stocha...
Linear regression model, Covariance matrix, Elliptically symmetric distribution, Generalized least s...
Many testing, estimation and confidence interval procedures discussed in the multivariate statistica...
This study evaluates estimators of the regression coefficients in the linear model, where the distur...
The authors propose a nonparametric method for automatically selecting the number of autocovariances...
AbstractIn this paper, we propose a framework of outer product least squares for covariance (COPLS) ...
It is well known that the ordinary least squares (OLS) estimates in the regression model are efficie...