存在观测协变量的个性化决策控制实验优化设计

Yezhuo Li, Qiong Zhang, A. Khademi, Boshi Yang
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引用次数: 1

摘要

对照实验广泛应用于临床试验或IT公司的用户行为研究等许多领域。近年来,研究实验设计问题以促进个性化决策成为一种流行趋势。在本文中,我们研究了在与实验单位(通常是患者或使用者)相关的观察性协变量存在的情况下,用于个性化决策的多重治疗分配的优化设计问题。我们假设分配给治疗的受试者的反应遵循线性模型,其中包括协变量和治疗之间的相互作用,以促进精确决策。我们将最优目标定义为不同治疗方法和不同协变量值的估计个性化治疗效果的最大方差。通过最小化这一目标得到最优设计。在对原优化问题进行半确定程序重构的情况下,利用基于YALMIP和MOSEK的优化求解器进行优化设计。通过数值研究来评估优化设计的质量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Optimal Design of Controlled Experiments for Personalized Decision Making in the Presence of Observational Covariates
Controlled experiments are widely applied in many areas such as clinical trials or user behavior studies in IT companies. Recently, it is popular to study experimental design problems to facilitate personalized decision making. In this paper, we investigate the problem of optimal design of multiple treatment allocation for personalized decision making in the presence of observational covariates associated with experimental units (often, patients or users). We assume that the response of a subject assigned to a treatment follows a linear model which includes the interaction between covariates and treatments to facilitate precision decision making. We define the optimal objective as the maximum variance of estimated personalized treatment effects over different treatments and different covariates values. The optimal design is obtained by minimizing this objective. Under a semi-definite program reformulation of the original optimization problem, we use a YALMIP and MOSEK based optimization solver to provide the optimal design. Numerical studies are provided to assess the quality of the optimal design.
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