Affiliation:
1. Department of Economics, M.I.T
2. UC Berkeley and CEMFI
Abstract
Abstract
We develop a concept of weak identification in linear instrumental variable models in which the number of instruments can grow at the same rate or slower than the sample size. We propose a jackknifed version of the classical weak identification-robust Anderson–Rubin (AR) test statistic. Large-sample inference based on the jackknifed AR is valid under heteroscedasticity and weak identification. The feasible version of this statistic uses a novel variance estimator. The test has uniformly correct size and good power properties. We also develop a pre-test for weak identification that is related to the size property of a Wald test based on the Jackknife Instrumental Variable Estimator. This new pre-test is valid under heteroscedasticity and with many instruments.
Publisher
Oxford University Press (OUP)
Subject
Economics and Econometrics
Reference26 articles.
1. Specification Testing in Models with Many Instruments;Anatolyev,;Econometric Theory,2011
2. Valid Two-Step Identification-Robust Confidence Sets for GMM;Andrews,;The Review of Economics and Statistics,2018
3. Testing with many Weak Instruments;Andrews,;Journal of Econometrics,2007
4. Optimal Two-sided Invariant Similar Tests of Instrumental Variables Regression;Andrews,;Econometrica,2006
5. Machine Labor;Angrist,,2019
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