We study the least squares estimator in the residual variance estimation context. We show that the mean squared differences of paired observations are asymptotically normally distributed. We further establish that, by regressing the mean squared differences of these paired observations on the squared distances between paired covariates via a simple least squares procedure, the resulting variance estimator is not only asymptotically normal and root-n consistent, but also reaches the optimal bound in terms of estimation variance. We also demonstrate the advantage of the least squares estimator in comparison with existing methods in terms of the second order asymptotic properties
We first show that the Generalized Least Squares estimator is the best median unbiased estimator of t...
We first show that the Generalized Least Squares estimator is the best median unbiased estimator of t...
We develops a general theory for variance function estimation in regression. Most methods in common ...
We study the least squares estimator in the residual variance estimation context. We show that the m...
Abstract. We analyze the asymptotic properties of estimators based on optimizing an extended least s...
We give a straightforward condition sufficient for determining the minimum asymptotic variance estim...
We propose a procedure to handle the problem of Gaussian regression when the variance is unknown. We...
In a standard linear model, we explore the optimality of the least squares estimator under assuption...
AbstractIn a standard linear model, we explore the optimality of the least squares estimator under a...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
variables. For this problem with known variance of innovations, the neutral Laplace weighted-average...
In this thesis we study the method of least-squares variance component estimation (LS-VCE) and elabo...
summary:The present paper deals with least weighted squares estimator which is a robust estimator an...
summary:The present paper deals with least weighted squares estimator which is a robust estimator an...
We develop a uniform Cramr–Rao lower bound (UCRLB) on the total variance of any estimator of an unkn...
We first show that the Generalized Least Squares estimator is the best median unbiased estimator of t...
We first show that the Generalized Least Squares estimator is the best median unbiased estimator of t...
We develops a general theory for variance function estimation in regression. Most methods in common ...
We study the least squares estimator in the residual variance estimation context. We show that the m...
Abstract. We analyze the asymptotic properties of estimators based on optimizing an extended least s...
We give a straightforward condition sufficient for determining the minimum asymptotic variance estim...
We propose a procedure to handle the problem of Gaussian regression when the variance is unknown. We...
In a standard linear model, we explore the optimality of the least squares estimator under assuption...
AbstractIn a standard linear model, we explore the optimality of the least squares estimator under a...
AbstractThe paper uses empirical process techniques to study the asymptotics of the least-squares es...
variables. For this problem with known variance of innovations, the neutral Laplace weighted-average...
In this thesis we study the method of least-squares variance component estimation (LS-VCE) and elabo...
summary:The present paper deals with least weighted squares estimator which is a robust estimator an...
summary:The present paper deals with least weighted squares estimator which is a robust estimator an...
We develop a uniform Cramr–Rao lower bound (UCRLB) on the total variance of any estimator of an unkn...
We first show that the Generalized Least Squares estimator is the best median unbiased estimator of t...
We first show that the Generalized Least Squares estimator is the best median unbiased estimator of t...
We develops a general theory for variance function estimation in regression. Most methods in common ...