LLM-Driven Treatment Effect Estimation Under Inference Time Text Confounding
–Neural Information Processing Systems
Estimating treatment effects is crucial for personalized decision-making in medicine, but this task faces unique challenges in clinical practice. At training time, models for estimating treatment effects are typically trained on well-structured medical datasets that contain detailed patient information. However, at inference time, predictions are often made using textual descriptions (e.g., descriptions with self-reported symptoms), which are incomplete representations of the original patient information. In this work, we make three contributions.
Neural Information Processing Systems
Jun-10-2026, 08:40:46 GMT