Optimal bandwidth choice for robust bias-corrected inference in regression discontinuity designs

Author:

Calonico Sebastian1,Cattaneo Matias D2,Farrell Max H3

Affiliation:

1. Columbia University, Department of Health Policy and Management, 722 West 168th Street, Office R482 New York, NY 10032, USA

2. Princeton University, Department of Operations Research and Financial Engineering, 98 Charlton St, Sherred Hall 227, Princeton NJ 08540, USA

3. University of Chicago, Booth School of Business, 5807 South Woodlawn Ave, USA

Abstract

Summary Modern empirical work in regression discontinuity (RD) designs often employs local polynomial estimation and inference with a mean square error (MSE) optimal bandwidth choice. This bandwidth yields an MSE-optimal RD treatment effect estimator, but is by construction invalid for inference. Robust bias-corrected (RBC) inference methods are valid when using the MSE-optimal bandwidth, but we show that they yield suboptimal confidence intervals in terms of coverage error. We establish valid coverage error expansions for RBC confidence interval estimators and use these results to propose new inference-optimal bandwidth choices for forming these intervals. We find that the standard MSE-optimal bandwidth for the RD point estimator is too large when the goal is to construct RBC confidence intervals with the smaller coverage error rate. We further optimize the constant terms behind the coverage error to derive new optimal choices for the auxiliary bandwidth required for RBC inference. Our expansions also establish that RBC inference yields higher-order refinements (relative to traditional undersmoothing) in the context of RD designs. Our main results cover sharp and sharp kink RD designs under conditional heteroskedasticity, and we discuss extensions to fuzzy and other RD designs, clustered sampling, and pre-intervention covariates adjustments. The theoretical findings are illustrated with a Monte Carlo experiment and an empirical application, and the main methodological results are available in R and Stata packages.

Funder

National Science Foundation

Publisher

Oxford University Press (OUP)

Subject

Economics and Econometrics

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