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Exploring modern machine learning methods to improve causal-effect estimationExploring modern machine learning methods to improve causal-effect estimation

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Exploring modern machine learning methods to improve causal-effect estimation
Authors
김예지최태화최상범
Issue Date
2022
Publisher
한국통계학회
Keywords
average causal effect; doubly-robust estimation; inverse probability weighting; propensity score; random forest; targeted learning
Citation
Communications for Statistical Applications and Methods, v.29, no.2, pp.177 - 191
Indexed
SCOPUS
KCI
OTHER
Journal Title
Communications for Statistical Applications and Methods
Volume
29
Number
2
Start Page
177
End Page
191
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/140299
DOI
10.29220/CSAM.2022.29.2.177
ISSN
2287-7843
Abstract
This paper addresses the use of machine learning methods for causal estimation of treatment effects from observational data. Even though conducting randomized experimental trials is a gold standard to reveal potential causal relationships, observational study is another rich source for investigation of exposure effects, for example, in the research of comparative effectiveness and safety of treatments, where the causal effect can be identified if covariates contain all confounding variables. In this context, statistical regression models for the expected outcome and the probability of treatment are often imposed, which can be combined in a clever way to yield more efficient and robust causal estimators. Recently, targeted maximum likelihood estimation and causal random forest is proposed and extensively studied for the use of data-adaptive regression in estimation of causal inference parameters. Machine learning methods are a natural choice in these settings to improve the quality of the final estimate of the treatment effect. We explore how we can adapt the design and training of several machine learning algorithms for causal inference and study their finite-sample performance through simulation experiments under various scenarios. Application to the percutaneous coronary intervention (PCI) data shows that these adaptations can improve simple linear regression-based methods.
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