Wild Bootstrap and Asymptotic Inference with Multiway Clustering

QED Working Paper Number
1415

We study two cluster-robust variance estimators (CRVEs) for regression models with clustering in two dimensions and give conditions under which t-statistics based on each of them yield asymptotically valid inferences. In particular, one of the CRVEs requires stronger assumptions about the nature of the intra-cluster correlations. We then propose several wild bootstrap procedures and state conditions under which they are asymptotically valid for each type of t-statistic. Extensive simulations suggest that using certain bootstrap procedures with one of the t-statistics generally performs very well. An empirical example confirms that bootstrap inferences can differ substantially from conventional ones

JEL Codes

Keywords

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

Working Paper

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