Litcius/Paper detail

Overlap, matching, or entropy weights: what are we weighting for?

Roland Matsouaka, Yi Liu, Yunji Zhou

2024Communications in Statistics - Simulation and Computation12 citationsDOI

Abstract

There has been a recent surge in statistical methods for handling the lack of adequate positivity when using inverse probability weights (IPW). However, these nascent developments have raised a number of questions. Thus, we demonstrate the ability of equipoise estimators (overlap, matching, and entropy weights) to handle the lack of positivity. Compared to IPW, the equipoise estimators have been shown to be flexible and easy to interpret. However, promoting their wide use requires that researchers know clearly why, when to apply them and what to expect. In this paper, we provide the rationale to use these estimators to achieve robust results. We specifically look into the impact imbalances in treatment allocation can have on the positivity and, ultimately, on the estimates of the treatment effect. We zero into the typical pitfalls of the IPW estimator and its relationship with the estimators of the average treatment effect on the treated (ATT) and on the controls (ATC). Furthermore, we also compare IPW trimming to the equipoise estimators. We focus particularly on two key points: What fundamentally distinguishes their estimands? When should we expect similar results? Our findings are illustrated through Monte-Carlo simulation studies and a data example on healthcare expenditure.

Topics & Concepts

WeightingMatching (statistics)Entropy (arrow of time)MathematicsStatistical physicsComputer scienceStatisticsArtificial intelligenceEconometricsPhysicsThermodynamicsAcousticsAdvanced Causal Inference TechniquesStatistical Methods and InferenceHealth Systems, Economic Evaluations, Quality of Life