Regression Discontinuity for Binary Response and Local Maximum Likelihood Estimator to Extrapolate Treatment

Eval Rev. 2023 Apr;47(2):182-208. doi: 10.1177/0193841X221105968. Epub 2022 Jun 10.

Abstract

Regression discontinuity is popular in finding treatment/policy effects when the treatment is determined by a continuous variable crossing a cutoff. Typically, a local linear regression (LLR) estimator is used to find the effects. For binary response, however, LLR is not suitable in extrapolating the treatment, as in doubling/tripling the treatment dose/intensity. The reason is that doubling/tripling the LLR estimate can give a number out of the bound [-1, 1], despite that the effect should be a change in probability. We propose local maximum likelihood estimators which overcome these shortcomings, while giving almost the same estimates as the LLR estimator does for the original treatment. A simulation study and an empirical analysis for effects of an income subsidy program on religion demonstrate these points.

Keywords: binary response; control function; extrapolation; local maximum likelihood estimator; regression discontinuity.

Publication types

  • Research Support, Non-U.S. Gov't

MeSH terms

  • Computer Simulation
  • Likelihood Functions*
  • Linear Models