Authors
Matthew Blackwell, Anton Strezhnev
Publication date
2022
Journal
Journal of the Royal Statistical Society: Series A (Statistics in Society)
Description
Time-varying treatments are prevalent in the social sciences. For example, a political campaign might decide to air attack ads against an opponent, but this decision to go negative will impact polling and, thus, future campaign strategy. If an analyst naively applies methods for point exposures to estimate the effect of earlier treatments, this would lead to post-treatment bias. Several existing methods can adjust for this type of time-varying confounding, but they typically rely on strong modelling assumptions. In this paper, we propose a novel two-step matching procedure for estimating the effect of two-period treatments. This method, telescope matching, reduces model dependence without inducing post-treatment bias by using matching with replacement to impute missing counterfactual outcomes. It then employs flexible regression models to correct for bias induced by imperfect matches. We derive the asymptotic …
Total citations
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