AMEMIYA'S FORM OF THE WEIGHTED LEAST SQUARES ESTIMATOR

Date

Authors

Koenker, Roger
Machado, José A.F.
Skeels, Christopher L.
Welsh, A. H.

Journal Title

Journal ISSN

Volume Title

Publisher

Access Statement

Research Projects

Organizational Units

Journal Issue

Abstract

Amemiya's estimator is a weighted least squares estimator of the regression coefficients in a linear model with heteroscedastic errors. It is attractive because the heteroscedasticity is not parametrized and the weights (which depend on the error covariance matrix) are estimated nonparametrically. This paper derives an asymptotic expansion for Amemiya's form of the weighted least squares estimator, and uses it to discuss the effects of estimating the weights, of the number of iterations, and of the choice of the initial estimate. The paper also discusses the special case of normally distributed errors and clarifies the particular consequences of assuming normality.

Description

Citation

Source

Australian Journal of Statistics

Book Title

Entity type

Publication

Access Statement

License Rights

Restricted until