Panel Paper: Local Polynomial Order in Regression Discontinuity Designs

Thursday, November 7, 2019
Plaza Building: Concourse Level, Governor's Square 10 (Sheraton Denver Downtown)

*Names in bold indicate Presenter

Zhuan Pei, Cornell University, David Card, University of California, Berkeley, David S. Lee, Princeton University and Andrea Weber, IZA Bonn


It has become standard practice to use local linear regressions in regression discontinuity designs. This paper highlights that the same theoretical arguments used to justify local linear regression suggest that alternative local polynomials could be preferred. We show in simulations that the local linear estimator is often dominated by alternative polynomial specifications. Additionally, we provide guidance on the selection of the polynomial order. The Monte Carlo evidence shows that the order-selection procedure (which is also readily adapted to fuzzy regression discontinuity and regression kink designs) performs well, particularly with large sample sizes typically found in empirical applications.

Full Paper: