60: Statistical Learning for Heterogeneous Treatment Effects: Pretraining, Prognosis, and Prediction

Erik Sverdrup Co-Author
Monash University
 
Robert Tibshirani Co-Author
Stanford University
 
Maximilian Schuessler First Author
Stanford University School of Medicine
 
Maximilian Schuessler Presenting Author
Stanford University School of Medicine
 
Tuesday, Aug 5: 10:30 AM - 12:20 PM
2216 
Contributed Posters 
Music City Center 
Robust estimation of heterogeneous treatment effects is a fundamental challenge for optimal decision-making in domains ranging from personalized medicine to educational policy. In recent years, predictive machine learning has emerged as a valuable toolbox for causal estimation, enabling more flexible effect estimation. However, accurately estimating conditional average treatment effects (CATE) remains a major challenge, particularly in the presence of many covariates. In this article, we propose pretraining strategies that leverages a phenomenon in real-world applications: factors that are prognostic of the outcome are frequently also predictive of treatment effect heterogeneity. In medicine, for example, components of the same biological signaling pathways frequently influence both baseline risk and treatment response. Specifically, we demonstrate our approach within the R-learner framework, which estimates the CATE by solving individual prediction problems based on a residualized loss. We use this structure to incorporate "side information" and develop models that can exploit synergies between risk prediction and causal effect estimation. In settings where these synergies are present, this cross-task learning enables more accurate signal detection: yields lower estimation error, reduced false discovery rates, and higher power for detecting heterogeneity.

Keywords

Causal inference

Heterogeneous treatment effects

statistical learning 

Main Sponsor

Section on Statistical Learning and Data Science