适应性实验设计:政治学的前景与应用

Molly Offer-Westort, A. Coppock, D. Green
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引用次数: 23

摘要

政治科学的实验研究人员经常面临这样的问题:在几种治疗手段中,哪一种最有效。他们还可能试图估计该分支下的平均结果,构建置信区间,并检验假设。通常,使用静态设计进行的多组试验以固定的概率将参与者分配到每个组。然而,越来越多的统计文献表明,动态地将更大的分配概率分配给更有前途的治疗方法的适应性实验设计更有能力发现表现最好的治疗方法。通过模拟和经验应用,我们探索了在何种条件下,这种设计可以加速发现更好的处理方法,并提高其效果估计的精度。认识到许多学者试图评估相对于控制条件的性能,我们还开发并实现了一种新的自适应算法,旨在最大限度地提高精度,以估计最大的治疗效果。
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Adaptive Experimental Design: Prospects and Applications in Political Science
Experimental researchers in political science frequently face the problem of inferring which of several treatment arms is most effective. They may also seek to estimate mean outcomes under that arm, construct confidence intervals, and test hypotheses. Ordinarily, multi-arm trials conducted using static designs assign participants to each arm with fixed probabilities. However, a growing statistical literature suggests that adaptive experimental designs that dynamically allocate larger assignment probabilities to more promising treatments are better equipped to discover the best-performing arm. Using simulations and empirical applications, we explore the conditions under which such designs hasten the discovery of superior treatments and improve the precision with which their effects are estimated. Recognizing that many scholars seek to assess performance relative to a control condition, we also develop and implement a novel adaptive algorithm that seeks to maximize the precision with which the largest treatment effect is estimated.
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