最优决胜设计的一般特征

Harrison H. Li, A. Owen
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引用次数: 3

摘要

Tie-breaker设计权衡了统计设计目标和短期收益,即优先分配二元处理给那些具有高运行变量x值的人。设计目标为双线回归模型中期望信息矩阵的任意连续函数,短期收益表示为运行变量与处理指标之间的协方差。我们研究了在接受治疗的受试者数量的外部约束下,如何指定设计函数,将治疗概率作为$x$的函数来优化这些竞争目标。我们的结果包括明显的存在性和唯一性保证,同时适应了伦理上吸引人的要求,即治疗概率在$x$中不减少。在这种约束下,总是存在一个最优设计函数,该函数在单个不连续点以下和以上都是常数。当运行变量分布不对称或接受治疗的受试者比例不是1/2美元时,与欧文和瓦里安(2020)将治疗概率固定在0美元、1/2美元和1美元的三级平局设计相比,我们的最优设计在不牺牲短期收益的情况下改进了D$-最优目标。我们用一个儿童早期政府干预项目“启智计划”的数据来说明我们的最佳设计。
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A general characterization of optimal tie-breaker designs
Tie-breaker designs trade off a statistical design objective with short-term gain from preferentially assigning a binary treatment to those with high values of a running variable $x$. The design objective is any continuous function of the expected information matrix in a two-line regression model, and short-term gain is expressed as the covariance between the running variable and the treatment indicator. We investigate how to specify design functions indicating treatment probabilities as a function of $x$ to optimize these competing objectives, under external constraints on the number of subjects receiving treatment. Our results include sharp existence and uniqueness guarantees, while accommodating the ethically appealing requirement that treatment probabilities are non-decreasing in $x$. Under such a constraint, there always exists an optimal design function that is constant below and above a single discontinuity. When the running variable distribution is not symmetric or the fraction of subjects receiving the treatment is not $1/2$, our optimal designs improve upon a $D$-optimality objective without sacrificing short-term gain, compared to the three level tie-breaker designs of Owen and Varian (2020) that fix treatment probabilities at $0$, $1/2$, and $1$. We illustrate our optimal designs with data from Head Start, an early childhood government intervention program.
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