Cluster-Robust Bootstrap Inference in Quantile Regression Models

Volume: 112, Issue: 517, Pages: 446 - 456
Published: Jan 2, 2017
Abstract
In this article I develop a wild bootstrap procedure for cluster-robust inference in linear quantile regression models. I show that the bootstrap leads to asymptotically valid inference on the entire quantile regression process in a setting with a large number of small, heterogeneous clusters and provides consistent estimates of the asymptotic covariance function of that process. The proposed bootstrap procedure is easy to implement and performs...
Paper Details
Title
Cluster-Robust Bootstrap Inference in Quantile Regression Models
Published Date
Jan 2, 2017
Volume
112
Issue
517
Pages
446 - 456
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