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首页> 外文期刊>Journal of Econometrics >Placebo inference on treatment effects when the number of clusters is small
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Placebo inference on treatment effects when the number of clusters is small

机译:当集群数量小时,安慰剂推断对治疗效果

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I introduce a general, Fisher-style randomization testing framework to conduct nearly exact inference about the lack of effect of a binary treatment in the presence of very few, large clusters when the treatment effect is identified across clusters. The proposed randomization test formalizes and extends the intuitive notion of generating null distributions by assigning placebo treatments to untreated clusters. I show that under simple and easily verifiable conditions, the placebo test leads to asymptotically valid inference in a very large class of empirically relevant models. Examples discussed explicitly are (i) least squares regression with cluster-level treatment, (ii) difference-in-differences estimation, and (iii) binary choice models with cluster-level treatment. A simulation study and an empirical example are provided. The proposed inference procedure is easy to implement and performs well with as few as three treated and three untreated clusters. (C) 2019 Elsevier B.V. All rights reserved.
机译:我介绍了一般的Fisher样式随机化测试框架,在群体识别治疗效果时,在很少的情况下,在很少的群体存在下,对二元治疗缺乏效果进行几乎精确的推断。所提出的随机化测试通过将安慰剂治疗分配给未处理的簇来形式化并延伸产生空分布的直观概念。我表明,在简单且易于验证的条件下,安慰剂测试导致了一类大量经验相关模型中的渐近有效推论。显式讨论的示例是(i)与群集级别处理的最小二乘因子,(ii)差异差异估计,(iii)具有簇级处理的二元选择模型。提供了一种模拟研究和经验例子。所提出的推理程序易于实施和表现良好,只有三个处理和三个未经处理的簇。 (c)2019年Elsevier B.V.保留所有权利。

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