Estimating Individual Treatment Effect in Observational Data Using Random Forest Methods

Estimation of individual treatment effect in observational data is complicated due to the challenges of confounding and selection bias. A useful inferential framework to address this is the counterfactual (potential outcomes) model, which takes the hypothetical stance of asking what if an individual...

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Bibliographic Details
Published inJournal of computational and graphical statistics Vol. 27; no. 1; pp. 209 - 219
Main Authors Lu, Min, Sadiq, Saad, Feaster, Daniel J., Ishwaran, Hemant
Format Journal Article
LanguageEnglish
Published United States American Statistical Association, Institute of Mathematical Statistics, and Interface Foundation of North America 01.01.2018
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ISSN1061-8600
1537-2715
DOI10.1080/10618600.2017.1356325

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Summary:Estimation of individual treatment effect in observational data is complicated due to the challenges of confounding and selection bias. A useful inferential framework to address this is the counterfactual (potential outcomes) model, which takes the hypothetical stance of asking what if an individual had received both treatments. Making use of random forests (RF) within the counterfactual framework we estimate individual treatment effects by directly modeling the response. We find that accurate estimation of individual treatment effects is possible even in complex heterogenous settings but that the type of RF approach plays an important role in accuracy. Methods designed to be adaptive to confounding, when used in parallel with out-of-sample estimation, do best. One method found to be especially promising is counterfactual synthetic forests. We illustrate this new methodology by applying it to a large comparative effectiveness trial, Project Aware, to explore the role drug use plays in sexual risk. The analysis reveals important connections between risky behavior, drug usage, and sexual risk.
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ISSN:1061-8600
1537-2715
DOI:10.1080/10618600.2017.1356325