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BOOTSTRAP WITH CLUSTER-DEPENDENCE IN TWO OR MORE DIMENSIONS
by
Menzel, Konrad
in
Bootstrap method
/ Clustering
/ Data
/ Economic theory
/ Inference
/ Multi‐way cluster‐dependence
/ network data
/ Statistics
/ Uniformity
/ U‐statistics
/ wild bootstrap
2021
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BOOTSTRAP WITH CLUSTER-DEPENDENCE IN TWO OR MORE DIMENSIONS
by
Menzel, Konrad
in
Bootstrap method
/ Clustering
/ Data
/ Economic theory
/ Inference
/ Multi‐way cluster‐dependence
/ network data
/ Statistics
/ Uniformity
/ U‐statistics
/ wild bootstrap
2021
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BOOTSTRAP WITH CLUSTER-DEPENDENCE IN TWO OR MORE DIMENSIONS
Journal Article
BOOTSTRAP WITH CLUSTER-DEPENDENCE IN TWO OR MORE DIMENSIONS
2021
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Overview
We propose a bootstrap procedure for data that may exhibit cluster-dependence in two or more dimensions. The asymptotic distribution of the sample mean or other statistics may be non-Gaussian if observations are dependent but uncorrelated within clusters. We show that there exists no procedure for estimating the limiting distribution of the sample mean under two-way clustering that achieves uniform consistency. However, we propose bootstrap procedures that achieve adaptivity with respect to different uniformity criteria. Important cases and extensions discussed in the paper include regression inference, U- and V-statistics, subgraph counts for network data, and non-exhaustive samples of matched data.
Publisher
Wiley,Blackwell Publishing Ltd
Subject
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