아래와 같이 초청특강을 개최하오니 많은 참석 바랍니다.
1. 일시 : 2025년 11월 27일(목), 오후 4시~
2. 장소 : 통계학과 스마트강의실 (자연대연구실험동 222호)
3. 연사 : 김종민 교수 (Statistics Discipline, Division of Science and Mathematics, University of Minnesota-Morris)
4. 연제 : Counterfactual Q-learning via the linear Buckley?James method for longitudinal survival data
Abstract
Treatment strategies are critical in healthcare, particularly when outcomes are subject to censoring. This study introduces the Counterfactual Buckley?James Q-Learning framework, which integrates counterfactual reasoning with the Buckley?James method and reinforcement learning to address challenges arising from longitudinal survival data. The Buckley?James method imputes censored survival times via conditional expectations based on observed data, offering a robust mechanism for handling incomplete outcomes. By incorporating these imputed values into a counterfactual Q-learning framework, the proposed method enables the estimation and comparison of potential outcomes under different treatment strategies. This facilitates the identification of optimal dynamic treatment regimes that maximize expected survival time. Through extensive simulation studies, the method demonstrates robust performance across various sample sizes and censoring scenarios, including right censoring and missing at random. Application to real- world clinical trial data further highlights the utility of this approach in informing personalized treatment decisions, providing an interpretable and reliable tool for optimizing survival outcomes in complex clinical settings.
Keywords: counterfactual framework, dynamic treatment regime, q-learning, survival analysis