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

10/24/2022
by   Roland A. Matsouaka, et al.
0

There has been a recent surge in statistical methods for handling the lack of adequate positivity when using inverse probability weighting. Alongside these nascent developments, a number of questions have been posed about the goals and intent of these methods: to infer causality, what are they really estimating and what are their target populations? Because causal inference is inherently a missing data problem, the assignment mechanism – how participants are represented in their respective treatment groups and how they receive their treatments – plays an important role in assessing causality. In this paper, we contribute to the discussion by highlighting specific characteristics of the equipoise estimators, i.e., overlap weights (OW) matching weights (MW) and entropy weights (EW) methods, which help answer these questions and contrast them with the behavior of the inverse probability weights (IPW) method. We discuss three distinct potential motives for weighting under the lack of adequate positivity when estimating causal effects: (1) What separates OW, MW, and EW from IPW trimming or truncation? (2) What fundamentally distinguishes the estimand of the IPW, i.e., average treatment effect (ATE) from the OW, MW, and EW estimands (resp. average treatment effect on the overlap (ATO), the matching (ATM), and entropy (ATEN))? (3) When should we expect similar results for these estimands, even if the treatment effect is heterogeneous? Our findings are illustrated through a number of Monte-Carlo simulation studies and a data example on healthcare expenditure.

READ FULL TEXT
research
10/04/2022

Using Balancing Weights to Target the Treatment Effect on the Treated when Overlap is Poor

Inverse probability weights are commonly used in epidemiology to estimat...
research
11/03/2020

A framework for causal inference in the presence of extreme inverse probability weights: the role of overlap weights

In this paper, we consider recent progress in estimating the average tre...
research
09/04/2023

Average treatment effect on the treated, under lack of positivity

The use of propensity score (PS) methods has become ubiquitous in causal...
research
06/07/2020

Propensity score weighting under limited overlap and model misspecification

Propensity score (PS) weighting methods are often used in non-randomized...
research
04/01/2019

A Regression Discontinuity Design for Ordinal Running Variables: Evaluating Central Bank Purchases of Corporate Bonds

We propose a regression discontinuity design which can be employed when ...
research
04/14/2023

Estimating Conditional Average Treatment Effects with Heteroscedasticity by Model Averaging and Matching

Causal inference is indispensable in many fields of empirical research, ...
research
04/29/2022

Inverse Probability Weighting: the Missing Link between Survey Sampling and Evidence Estimation

We consider the class of inverse probability weight (IPW) estimators, in...

Please sign up or login with your details

Forgot password? Click here to reset