Keith Finlay
;
Leandro M. Magnusson

two applications of wild bootstrap methods to improve inference in cluster‐iv models (replication data)

Microeconomic data often have within-cluster dependence, which affects standard error estimation and inference. When the number of clusters is small, asymptotic tests can be severely oversized. In the instrumental variables (IV) model, the potential presence of weak instruments further complicates hypothesis testing. We use wild bootstrap methods to improve inference in two empirical applications with these characteristics. Building from estimating equations and residual bootstraps, we identify variants robust to the presence of weak instruments and a small number of clusters. They reduce absolute size bias significantly and demonstrate that the wild bootstrap should join the standard toolkit in IV and cluster-dependent models.

Data and Resources

Suggested Citation

Finlay, Keith; Magnusson, Leandro M. (2019): Two applications of wild bootstrap methods to improve inference in cluster‐IV models (replication data). Version: 1. Journal of Applied Econometrics. Dataset. http://dx.doi.org/10.15456/jae.2022327.0710616608