Propensity score weighting under limited overlap and model misspecification
Yunji Zhou, Roland A. Matsouaka, Laine Thomas

TL;DR
This paper compares various propensity score weighting methods under conditions of limited overlap and model misspecification, finding that overlap, matching, and entropy weights outperform inverse probability weighting in bias and variance.
Contribution
The study provides a comprehensive simulation comparison of IPW and its alternatives, highlighting their robustness under practical violations of assumptions.
Findings
OW, MW, and EW outperform IPW in bias and variance
Alternative methods are more stable with limited overlap
Simulation results support using OW, MW, and EW in practice
Abstract
Propensity score (PS) weighting methods are often used in non-randomized studies to adjust for confounding and assess treatment effects. The most popular among them, the inverse probability weighting (IPW), assigns weights that are proportional to the inverse of the conditional probability of a specific treatment assignment, given observed covariates. A key requirement for IPW estimation is the positivity assumption, i.e., the PS must be bounded away from 0 and 1. In practice, violations of the positivity assumption often manifest by the presence of limited overlap in the PS distributions between treatment groups. When these practical violations occur, a small number of highly influential IPW weights may lead to unstable IPW estimators, with biased estimates and large variances. To mitigate these issues, a number of alternative methods have been proposed, including IPW trimming, overlap…
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