过度识别广义矩方法模型的一步估计量

One-Step Estimators for Over-Identified Generalized Method of Moments Models

Review of Economic Studies · 1997
被引 257
人大 A+FT50ABS 4*

中文导读

提出替代Hansen(1982)GMM估计量的一步估计法,无需初始权重矩阵估计,易于处理误设定,具有信息论解释,并在实证中表现更优,但计算维度更高。

Abstract

In this paper I discuss alternatives to the GMM estimators proposed by Hansen (1982) and others. These estimators are shown to have a number of advantages. First of all, there is no need to estimate in an initial step a weight matrix as required in the conventional estimation procedure. Second, it is straightforward to derive the distribution of the estimator under general misspecification. Third, some of the alternative estimators have appealing information-theoretic interpretations. In particular, one of the estimators is an empirical likelihood estimator with an interpretation as a discrete support maximum likelihood estimator. Fourth, in an empirical example one of the new estimators is shown to perform better than the conventional estimators. Finally, the new estimators make it easier for the researcher to get better approximations to their distributions using saddlepoint approximations. The main cost is computational: the system of equations that has to be solved is of greater dimension than the number of parameters of interest. In practice this may or may not be a problem in particular applications.

GMM估计量过度识别经验似然信息论解释