Conditional Linear Combination Tests for Weakly Identified Models

被引:26
作者
Andrews, Isaiah [1 ]
机构
[1] MIT, Dept Econ, 50 Mem Dr,E52-526, Cambridge, MA 02142 USA
关键词
Instrumental variables; nonlinear models; power; size; test; weak identification; INSTRUMENTAL VARIABLES REGRESSION; TIME-SERIES MODELS; NUISANCE PARAMETER; INFERENCE; STATISTICS; FAILURE; ROBUST; GMM;
D O I
10.3982/ECTA12407
中图分类号
F [经济];
学科分类号
02 ;
摘要
We introduce the class of conditional linear combination tests, which reject null hypotheses concerning model parameters when a data-dependent convex combination of two identification-robust statistics is large. These tests control size under weak identification and have a number of optimality properties in a conditional problem. We show that the conditional likelihood ratio test of Moreira, 2003 is a conditional linear combination test in models with one endogenous regressor, and that the class of conditional linear combination tests is equivalent to a class of quasi-conditional likelihood ratio tests. We suggest using minimax regret conditional linear combination tests and propose a computationally tractable class of tests that plug in an estimator for a nuisance parameter. These plug-in tests perform well in simulation and have optimal power in many strongly identified models, thus allowing powerful identification-robust inference in a wide range of linear and nonlinear models without sacrificing efficiency if identification is strong.
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页码:2155 / 2182
页数:28
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