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Main Authors: Alfonso-Sánchez, Sherly, Sendova, Kristina P., Bravo, Cristián
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2410.05177
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author Alfonso-Sánchez, Sherly
Sendova, Kristina P.
Bravo, Cristián
author_facet Alfonso-Sánchez, Sherly
Sendova, Kristina P.
Bravo, Cristián
contents When making treatment selection decisions, it is essential to include a causal effect estimation analysis to compare potential outcomes under different treatments or controls, assisting in optimal selection. However, merely estimating individual treatment effects may not suffice for truly optimal decisions. Our study addressed this issue by incorporating additional criteria, such as the estimations' uncertainty, measured by the conditional value-at-risk, commonly used in portfolio and insurance management. For continuous outcomes observable before and after treatment, we incorporated a specific prediction condition. We prioritized treatments that could yield optimal treatment effect results and lead to post-treatment outcomes more desirable than pretreatment levels, with the latter condition being called the prediction criterion. With these considerations, we propose a comprehensive methodology for multitreatment selection. Our approach ensures satisfaction of the overlap assumption, crucial for comparing outcomes for treated and control groups, by training propensity score models as a preliminary step before employing traditional causal models. To illustrate a practical application of our methodology, we applied it to the credit card limit adjustment problem. Analyzing a fintech company's historical data, we found that relying solely on counterfactual predictions was inadequate for appropriate credit line modifications. Incorporating our proposed additional criteria significantly enhanced policy performance.
format Preprint
id arxiv_https___arxiv_org_abs_2410_05177
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Are causal effect estimations enough for optimal recommendations under multitreatment scenarios?
Alfonso-Sánchez, Sherly
Sendova, Kristina P.
Bravo, Cristián
Machine Learning
62-07, 62P05
When making treatment selection decisions, it is essential to include a causal effect estimation analysis to compare potential outcomes under different treatments or controls, assisting in optimal selection. However, merely estimating individual treatment effects may not suffice for truly optimal decisions. Our study addressed this issue by incorporating additional criteria, such as the estimations' uncertainty, measured by the conditional value-at-risk, commonly used in portfolio and insurance management. For continuous outcomes observable before and after treatment, we incorporated a specific prediction condition. We prioritized treatments that could yield optimal treatment effect results and lead to post-treatment outcomes more desirable than pretreatment levels, with the latter condition being called the prediction criterion. With these considerations, we propose a comprehensive methodology for multitreatment selection. Our approach ensures satisfaction of the overlap assumption, crucial for comparing outcomes for treated and control groups, by training propensity score models as a preliminary step before employing traditional causal models. To illustrate a practical application of our methodology, we applied it to the credit card limit adjustment problem. Analyzing a fintech company's historical data, we found that relying solely on counterfactual predictions was inadequate for appropriate credit line modifications. Incorporating our proposed additional criteria significantly enhanced policy performance.
title Are causal effect estimations enough for optimal recommendations under multitreatment scenarios?
topic Machine Learning
62-07, 62P05
url https://arxiv.org/abs/2410.05177