Variable-Ratio Matching with Fine Balance in a Study of Peer Health Exchange
Luke Keele, Sam Pimentel, Frank Yoon

TL;DR
This paper introduces a novel matching method that combines variable-ratio matching with fine balance constraints to improve covariate balance in observational studies, demonstrated through a health intervention evaluation.
Contribution
It develops a new algorithm allowing fine balance constraints in variable-ratio matching, enhancing covariate balance beyond existing methods.
Findings
The proposed method improves covariate balance in matched samples.
It outperforms standard variable-ratio matching in the Peer Health Exchange study.
Enhanced matching quality leads to more reliable treatment effect estimates.
Abstract
In observational studies of treatment effects, matched samples are created so treated and control groups are similar in terms of observable covariates. Traditionally such matched samples consist of matched pairs. If a pair match fails to make treated and control units sufficiently comparable, alternative forms of matching may be necessary. One general strategy to improve balance is to match a variable number of control units to each treated unit. A more tailored strategy is to adopt a fine balance constraint. Under a fine balance constraint, a nominal covariate is exactly balanced, but it does not require individually matched treated and control subjects for this variable. In the example, we seek to construct a matched sample for an ongoing evaluation of Peer Health Exchange, an intervention in schools designed to decrease risky health behaviors among youth. We find that an optimal pair…
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Taxonomy
TopicsAdvanced Causal Inference Techniques · Statistical Methods and Bayesian Inference · Health Systems, Economic Evaluations, Quality of Life
