Bootstrap-Based Improvements for Inference with Clustered Errors
Researchers have increasingly realized the need to account for within-group dependence in estimating standard errors of regression parameter estimates. The usual solution is to calculate cluster-robust standard errors that permit heteroskedasticity and within-cluster error correlation, but presume that the number of clusters is large. Standard asymptotic tests can over-reject, however, with few (five to thirty) clusters. We investigate inference using cluster bootstrap-t procedures that provide asymptotic refinement. These procedures are evaluated using Monte Carlos, including the example of Bertrand, Duflo, and Mullainathan (2004). Rejection rates of 10% using standard methods can be reduced to the nominal size of 5% using our methods. Copyright by the President and Fellows of Harvard College and the Massachusetts Institute of Technology.
Year of publication: |
2008
|
---|---|
Authors: | Cameron, A. Colin ; Gelbach, Jonah B. ; Miller, Douglas L. |
Published in: |
The Review of Economics and Statistics. - MIT Press. - Vol. 90.2008, 3, p. 414-427
|
Publisher: |
MIT Press |
Saved in:
Online Resource
Saved in favorites
Similar items by person
-
Bootstrap-based improvements for inference with clustered errors
Cameron, A. Colin, (2006)
-
Robust Inference With Multiway Clustering
Cameron, A. Colin, (2011)
-
Robust Inference With Multiway Clustering
Cameron, A. Colin, (2011)
- More ...