A Stata package for the application of semiparametric estimators of dose-response functions

Michela Bia, Carlos a. Flores, Alfonso Flores-lagunes, Alessandra Mattei

Research output: Working paper

578 Downloads (Pure)

Abstract

In many observational studies the treatment may not be binary or categorical, but rather continuous in nature, so focus is on estimating a continuous dose-response function. In this paper we propose a set of Stata programs to semiparametrically estimate the dose-response function of a continuous treatment, under the key assumption that adjusting for pre-treatment variables removes all biases (uncounfoundedness). We focus on kernel methods and penalized spline models, and use generalized propensity score methods under continuous treatment regimes for covariate adjustment. Several alternative parametric assumptions on the functional form of the generalized propensity score are implemented in our Stata programs, which also allow users to impose a common support condition and evaluate the balancing of the covariates using various approaches. We illustrate our routines by estimating the effect of the prize amount on subsequent labor earnings for Massachusetts lottery winners, using a data set collected by Imbens et al. (2001).
Original languageEnglish
PublisherCEPS/INSTEAD
Number of pages28
Publication statusPublished - 2013

Publication series

NameWorking Papers
PublisherCEPS/INSTEAD
No.2013-07

Keywords

  • dose-response function
  • generalized propensity score
  • kernel estimator
  • penalized spline estimator
  • weak unconfoundedness

Cite this