Bootstrap And Asymptotic Inference With Multiway Clustering

QED Working Paper Number
1386

We study a cluster-robust variance estimator (CRVE) for regression models with clustering in two dimensions that was proposed in Cameron, Gelback, and Miller (2011). We prove that this CRVE is consistent and yields valid inferences under precisely stated assumptions about moments and cluster sizes. We then propose several wild bootstrap procedures and prove that they are asymptotically valid. Simulations suggest that bootstrap inference tends to be much more accurate than inference based on the t distribution, especially when there are few clusters in at least one dimension. An empirical example confirms that bootstrap inferences can differ substantially from conventional ones.

JEL Codes

Keywords

clustered data
cluster-robust variance estimator
CRVE
wild bootstrap
wild cluster bootstrap
two-way clustering

Working Paper

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