Valid heteroskedasticity robust testing
Journal
arXiv.org
ISSN-Digital
2331-8422
Type
working paper
Date Issued
2021-04-26
Author(s)
Pötscher, Benedikt M.
Preinerstorfer, David
Abstract
Tests based on heteroskedasticity robust standard errors are an important technique in econometric practice. Choosing the right critical value, however, is not all that simple: Conventional critical values based on asymptotics often lead to severe size distortions; and so do existing adjustments including the bootstrap. To avoid these issues, we suggest to use smallest size-controlling critical values, the generic existence of which we prove in this article. Furthermore, sufficient and often also necessary conditions for their existence are given that are easy to check. Granted their existence, these critical values are the canonical choice: larger critical values result in unnecessary power loss, whereas smaller critical values lead to over-rejections under the null hypothesis, make spurious discoveries more likely, and thus are invalid. We suggest algorithms to numerically determine the proposed critical values and provide implementations in accompanying software. Finally, we numerically study the behavior of the proposed testing procedures, including their power properties.
Language
English
HSG Classification
contribution to scientific community
Pages
79
Official URL
Subject(s)
Eprints ID
266185