Optimal Two-Sided Tests for Instrumental Variables Regression with Heteroskedastic and Autocorrelated Errors
Humberto Moreira, Marcelo J. Moreira

TL;DR
This paper develops optimal two-sided tests for IV models with heteroskedastic and autocorrelated errors, providing finite-sample and asymptotic theory for robust hypothesis testing.
Contribution
It introduces invariant weights and boundary conditions for two-sided tests, including new SU tests that outperform existing methods under various conditions.
Findings
MM2-SU test is optimal under strong IV asymptotics.
WAP-SU tests are robust to weak IV and heteroskedastic errors.
The proposed tests outperform existing methods in simulations.
Abstract
This paper considers two-sided tests for the parameter of an endogenous variable in an instrumental variable (IV) model with heteroskedastic and autocorrelated errors. We develop the finite-sample theory of weighted-average power (WAP) tests with normal errors and a known long-run variance. We introduce two weights which are invariant to orthogonal transformations of the instruments; e.g., changing the order in which the instruments appear. While tests using the MM1 weight can be severely biased, optimal tests based on the MM2 weight are naturally two-sided when errors are homoskedastic. We propose two boundary conditions that yield two-sided tests whether errors are homoskedastic or not. The locally unbiased (LU) condition is related to the power around the null hypothesis and is a weaker requirement than unbiasedness. The strongly unbiased (SU) condition is more restrictive than LU,…
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