AI Article Synopsis

  • Individuals have different responses to treatment based on their characteristics and the likelihood of receiving that treatment, highlighting the importance of analyzing heterogeneous treatment effects.
  • This paper presents a practical approach to studying these effects using the common assumption of ignorability found in regression analysis, providing one parametric and two non-parametric methods for evaluation.
  • The methods include estimating propensity scores followed by treatment effects estimation, matching controls to treated units to create simple comparisons, and performing non-parametric regressions for outcomes in treated and control groups, illustrated through an example on college attendance and women's fertility.

Article Abstract

Individuals differ not only in their background characteristics, but also in how they respond to a particular treatment, intervention, or stimulation. In particular, treatment effects may vary systematically by the propensity for treatment. In this paper, we discuss a practical approach to studying heterogeneous treatment effects as a function of the treatment propensity, under the same assumption commonly underlying regression analysis: ignorability. We describe one parametric method and two non-parametric methods for estimating interactions between treatment and the propensity for treatment. For the first method, we begin by estimating propensity scores for the probability of treatment given a set of observed covariates for each unit and construct balanced propensity score strata; we then estimate propensity score stratum-specific average treatment effects and evaluate a trend across them. For the second method, we match control units to treated units based on the propensity score and transform the data into treatment-control comparisons at the most elementary level at which such comparisons can be constructed; we then estimate treatment effects as a function of the propensity score by fitting a non-parametric model as a smoothing device. For the third method, we first estimate non-parametric regressions of the outcome variable as a function of the propensity score separately for treated units and for control units and then take the difference between the two non-parametric regressions. We illustrate the application of these methods with an empirical example of the effects of college attendance on womens fertility.

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Source
http://www.ncbi.nlm.nih.gov/pmc/articles/PMC3591476PMC
http://dx.doi.org/10.1177/0081175012452652DOI Listing

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