信息矩阵检验统计量的渐近展开

Asymptotic Expansions of the Information Matrix Test Statistic

Econometrica · 1991
被引 99
人大 A+FT50ABS 4*

中文导读

发现信息矩阵检验的有限样本分布与渐近卡方分布差异很大,尤其在应用计量常见样本量下;通过Edgeworth和Cornish-Fisher展开得到更优的近似,并应用于正态、指数和回归模型,发现非正态性检验的分布对协变量设计不变。

Abstract

The information matrix (IM) test is shown to have a finite sample distribution which is poorly approximated by its asymptotic X 2 distribution in models and sample sizes commonly encountered in applied econometric research. The quality of the x2 approximation depends upon the method chosen to compute the test. Failure to exploit restrictions on the covariance matrix of the test can lead to a test with appalling finite sample properties. Order O(n -1) approximations to the exact distribution of an efficient form of the IM test are reported. These are developed from asymptotic expansions of the Edgeworth and Cornish-Fisher types. They are compared with Monte Carlo estimates of the finite sample distribution of the test and are found to be superior to the usual x2 approximations in sample sizes of the magnitude found in applied micro-econometric work. The methods developed in the paper are applied to normal and exponential models and to normal regression models. Results are provided for the full IM test and for heteroskedasticity and nonnormality diagnostic tests which are special cases of the IM test. In geieral the quality of alternative approximations is sensitive to covariate design. However commonly used nonnormality tests are found to have distributions which, to order O(n-1), are invariant under changes in covariate design. This leads to simple design and parameter invariant size corrections for nonnormality tests.

信息矩阵检验渐近展开有限样本分布Edgeworth展开