Resistant Inference in Instrumental Variable Models
Abstract
The classical tests in the instrumental variable model can behave arbitrarily if the data is contaminated. For instance, one outlying observation can be enough to change the outcome of a test. We develop a framework to construct testing procedures that are robust to weak instruments, outliers and heavy-tailed errors in the instrumental variable model. The framework is constructed upon M-estimators. By deriving the influence functions of the classical weak instrument robust tests, such as the Anderson-Rubin test, K-test and the conditional likelihood ratio (CLR) test, we prove their unbounded sensitivity to infinitesimal contamination. Therefore, we construct contamination resistant/robust alternatives. In particular, we show how to construct a robust CLR statistic based on Mallows type M-estimators and show that its asymptotic distribution is the same as that of the (classical) CLR statistic. The theoretical results are corroborated by a simulation study. Finally, we revisit three empirical studies affected by outliers and demonstrate how the new robust tests can be used in practice.
Keywords
Cite
@article{arxiv.2403.16844,
title = {Resistant Inference in Instrumental Variable Models},
author = {Jens Klooster and Mikhail Zhelonkin},
journal= {arXiv preprint arXiv:2403.16844},
year = {2024}
}
Comments
39 pages, 4 figures, 3 tables