时 间:2026年7月6日(星期一)10:00-11:00
主持人:复旦大学 管理学院 统计与数据科学系 沈娟 副教授
地 点:史带楼302室
报 告 人:Yuqing Zhou(周雨晴)
University of Michigan
题 目:Semiparametric Inference for Covariate-Adaptive Randomization without Ad-hoc Discretization
摘 要:Covariate-adaptive randomization has been frequently employed in clinical trials and other studies to ensure that important prognostic factors are balanced across treatment and control groups. However, most model-based studies on inference for covariate-adaptive randomization assume a correctly specified model and require discretization of the continuous covariates as a preliminary step; inference with a more flexible model for covariate-adaptive randomization directly applied to continuous covariates remains understudied. In this paper, we propose a covariate-adaptive randomization with an increasing dimension of the feature map under a partially linear model without discretization on the covariates, some or all of which are used for treatment balancing. We propose a framework to obtain valid and powerful inference for covariate-adaptive randomization when the true model is partially linear under three different working models: (i) a location-shift model that leads to the two-sample t-test, (ii) a linear model, and (iii) a partially linear model. Specifically, we obtain an explicit variance adjustment for each working model to perform asymptotically sharp inference. Through numerical studies, we show that the proposed approach often improves performance over the existing approaches for covariate-adaptive randomization based on discretization.
个人简介:Yuqing Zhou is a fourth-year PhD student in the Department of Statistics at the University of Michigan, advised by Professors Xuming He and Kean Ming Tan. Her research focuses on subgroup analysis and adaptive design, with the goal of improving statistical efficiency and enhancing patient benefits in clinical trials.
统计与数据科学系
2026-7-2
活动讲座
新闻动态
微信头条
招生咨询
媒体视角
瞰见云课堂