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Testing for the appropriate level of clustering in linear regression models

James MacKinnon, Morten Nielsen and Matthew Webb

Papers from arXiv.org

Abstract: The overwhelming majority of empirical research that uses cluster-robust inference assumes that the clustering structure is known, even though there are often several possible ways in which a dataset could be clustered. We propose two tests for the correct level of clustering in regression models. One test focuses on inference about a single coefficient, and the other on inference about two or more coefficients. We provide both asymptotic and wild bootstrap implementations. The proposed tests work for a null hypothesis of either no clustering or ``fine'' clustering against alternatives of ``coarser'' clustering. We also propose a sequential testing procedure to determine the appropriate level of clustering. Simulations suggest that the bootstrap tests perform very well under the null hypothesis and can have excellent power. An empirical example suggests that using the tests leads to sensible inferences.

Date: 2023-01, Revised 2023-03
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Citations: View citations in EconPapers (2)

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http://arxiv.org/pdf/2301.04522 Latest version (application/pdf)

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Journal Article: Testing for the appropriate level of clustering in linear regression models (2023) Downloads
Working Paper: Testing for the appropriate level of clustering in linear regression models (2022) Downloads
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