It is well known that in the presence of heteroscedasticity ordinary least squares estimator is not efficient. I propose a generalized automatic least squares estimator (GALS) that makes partial correction of heteroscedasticity based on a (potentially) misspecified model without a pretest. Such an estimator is guaranteed to be at least as efficient as either OLS or WLS but can provide some asymptotic efficiency gains over OLS if the misspecified model is approximately correct. If the heteroscedasticity model is correct, the proposed estimator achieves full asymptotic efficiency. The idea is to frame moment conditions corresponding to OLS and WLS squares based on miss-specified heteroscedasticity as a joint generalized method of moments estimation problem. The resulting optimal GMM estimator is equivalent to a feasible GLS with estimated weight matrix. I also propose an optimal GMM variance-covariance estimator for GALS to account for any remaining heteroscedasticity in the residuals.
翻译:在存在异方差的情况下,普通最小二乘估计量的效率不高是众所周知的。本文提出了一种广义自动最小二乘估计器(GALS),它基于可能存在的错误模型进行了部分异方差修正,而无需预先测试。这样的估计器保证至少与OLS或WLS一样有效,但如果误配的模型大致正确,则可以提供一些渐近效率改进。如果异方差模型正确,则所提出的估计器实现了完全渐进效率。研究思路是将与OLS和WLS对应的矩条件基于误匹配的异方差性构成联合广义矩估计问题。由此得到的最优GMM估计量等价于具有估计权重矩阵的可行GLS。本文还提供了一种最优GMM方差-协方差估计器,用于对GALS中任何剩余异方差的残差进行校正。