K-Fold Causal BART for CATE Estimation
Hugo Gobato Souto, Francisco Louzada Neto

TL;DR
This paper introduces K-Fold Causal BART, a novel model for estimating treatment effects, which shows robustness and better generalization in certain scenarios but is not state-of-the-art on the IHDP benchmark.
Contribution
The paper proposes K-Fold Causal BART for causal effect estimation and provides a comprehensive evaluation, highlighting its strengths and limitations compared to existing models.
Findings
ps-BART outperforms Bayesian Causal Forest in generalization
Performance drops of BCF with increasing heterogeneity
Models overconfident in low heterogeneity scenarios
Abstract
This research aims to propose and evaluate a novel model named K-Fold Causal Bayesian Additive Regression Trees (K-Fold Causal BART) for improved estimation of Average Treatment Effects (ATE) and Conditional Average Treatment Effects (CATE). The study employs synthetic and semi-synthetic datasets, including the widely recognized Infant Health and Development Program (IHDP) benchmark dataset, to validate the model's performance. Despite promising results in synthetic scenarios, the IHDP dataset reveals that the proposed model is not state-of-the-art for ATE and CATE estimation. Nonetheless, the research provides several novel insights: 1. The ps-BART model is likely the preferred choice for CATE and ATE estimation due to better generalization compared to the other benchmark models - including the Bayesian Causal Forest (BCF) model, which is considered by many the current best model for…
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Taxonomy
TopicsStatistical Methods in Clinical Trials
MethodsCausal inference
