Matthew D. Webb
Carleton University
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Publication
Featured researches published by Matthew D. Webb.
Econometrics Journal | 2018
James G. MacKinnon; Matthew D. Webb
Inference based on cluster-robust standard errors in linear regression models, using either the Students t distribution or the wild cluster bootstrap, is known to fail when the number of treated clusters is very small. We propose a family of new procedures calledthe subcluster wild bootstrap, which includes the ordinary wild bootstrap as a limiting case. In the case of pure treatment models, where all observations within clusters are either treated or not, the latter procedure can work remarkably well. The key requirement is that all cluster sizes, regardless of treatment, should be similar. Unfortunately, the analogue of this requirement is not likely to hold for difference-in-differences regressions. Our theoretical results are supported by extensive simulations and an empirical example.
Journal of Applied Econometrics | 2017
James G. MacKinnon; Matthew D. Webb
Carleton Economic Papers | 2016
James G. MacKinnon; Matthew D. Webb
Archive | 2016
Casey Warman; Christopher Worswick; Matthew D. Webb
Carleton Economic Papers | 2016
James G. MacKinnon; Matthew D. Webb
Journal of Population Economics | 2019
Casey Warman; Matthew D. Webb; Christopher Worswick
Archive | 2018
James G. MacKinnon; Matthew D. Webb
Archive | 2018
David Roodman; James G. MacKinnon; Morten Orregard Nielsen; Matthew D. Webb
Archive | 2017
James G. MacKinnon; Matthew D. Webb
Archive | 2017
James G. MacKinnon; Matthew D. Webb