Optimal Experimental Design for Staggered Rollouts

Ruoxuan Xiong, S. Athey, M. Bayati, G. Imbens
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引用次数: 31

Abstract

Experimentation has become an increasingly prevalent tool for guiding decision-making and policy choices. A common hurdle in designing experiments is the lack of statistical power. In this paper, we study the optimal multi-period experimental design under the constraint that the treatment cannot be easily removed once implemented; for example, a government might implement a public health intervention in different geographies at different times, where the treatment cannot be easily removed due to practical constraints. The treatment design problem is to select which geographies (referred by units) to treat at which time, intending to test hypotheses about the effect of the treatment. When the potential outcome is a linear function of unit and time effects, and discrete observed/latent covariates, we provide an analytically feasible solution to the optimal treatment design problem where the variance of the treatment effect estimator is at most 1+O(1/N^2) times the variance using the optimal treatment design, where N is the number of units. This solution assigns units in a staggered treatment adoption pattern - if the treatment only affects one period, the optimal fraction of treated units in each period increases linearly in time; if the treatment affects multiple periods, the optimal fraction increases non-linearly in time, smaller at the beginning and larger at the end. In the general setting where outcomes depend on latent covariates, we show that historical data can be utilized in designing experiments. We propose a data-driven local search algorithm to assign units to treatment times. We demonstrate that our approach improves upon benchmark experimental designs via synthetic interventions on the influenza occurrence rate and synthetic experiments on interventions for in-home medical services and grocery expenditure.
交错布局的优化实验设计
实验已成为指导决策和政策选择的日益普遍的工具。设计实验的一个常见障碍是缺乏统计能力。本文研究了在处理一旦实施就不容易去除的约束下的最优多周期实验设计;例如,一国政府可能在不同的时间在不同的地区实施公共卫生干预措施,但由于实际限制,这种治疗措施不容易取消。治疗设计问题是选择哪个地区(按单位)在哪个时间进行治疗,目的是检验关于治疗效果的假设。当潜在结果是单位和时间效应的线性函数,以及离散的观察/潜在协变量时,我们提供了最优治疗设计问题的解析可行解,其中治疗效果估计量的方差最多为1+O(1/N^2)倍的方差使用最优治疗设计,其中N是单位的数量。该解决方案以交错处理采用模式分配单元-如果处理仅影响一个周期,则每个周期中处理单元的最佳比例随时间线性增加;如果治疗影响多个时期,则最佳分数随时间呈非线性增长,开始时较小,结束时较大。在结果取决于潜在协变量的一般设置中,我们表明历史数据可以用于设计实验。我们提出了一种数据驱动的局部搜索算法来分配单位的治疗时间。我们通过对流感发生率的综合干预和对家庭医疗服务和杂货支出的干预的综合实验,证明我们的方法改进了基准实验设计。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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