Variable Importance Matching for Causal Inference
Quinn Lanners,
Harsh Parikh,
Alexander Volfovsky,
Cynthia Rudin and
David Page
Papers from arXiv.org
Abstract:
Our goal is to produce methods for observational causal inference that are auditable, easy to troubleshoot, accurate for treatment effect estimation, and scalable to high-dimensional data. We describe a general framework called Model-to-Match that achieves these goals by (i) learning a distance metric via outcome modeling, (ii) creating matched groups using the distance metric, and (iii) using the matched groups to estimate treatment effects. Model-to-Match uses variable importance measurements to construct a distance metric, making it a flexible framework that can be adapted to various applications. Concentrating on the scalability of the problem in the number of potential confounders, we operationalize the Model-to-Match framework with LASSO. We derive performance guarantees for settings where LASSO outcome modeling consistently identifies all confounders (importantly without requiring the linear model to be correctly specified). We also provide experimental results demonstrating the method's auditability, accuracy, and scalability as well as extensions to more general nonparametric outcome modeling.
Date: 2023-02, Revised 2023-06
New Economics Papers: this item is included in nep-ecm
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Citations:
Published in Proceedings of the Thirty-Ninth Conference on Uncertainty in Artificial Intelligence, PMLR 216:1174-1184, 2023
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Persistent link: https://EconPapers.repec.org/RePEc:arx:papers:2302.11715
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