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Using Standard Tools From Finite Population Sampling to Improve Causal Inference for Complex Experiments

机译:使用有限总体抽样中的标准工具来改善复杂实验的因果推理

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This article considers causal inference for treatment contrasts from a randomized experiment using potential outcomes in a finite population setting. Adopting a Neymanian repeated sampling approach that integrates such causal inference with finite population survey sampling, an inferential framework is developed for general mechanisms of assigning experimental units to multiple treatments. This framework extends classical methods by allowing the possibility of randomization restrictions and unequal replications. Novel conditions that are "milder" than strict additivity of treatment effects, yet permit unbiased estimation of the finite population sampling variance of any treatment contrast estimator, are derived. The consequences of departures from such conditions are also studied under the criterion of minimax bias, and a new justification for using the Neymanian conservative sampling variance estimator in experiments is provided. The proposed approach can readily be extended to the case of treatments with a general factorial structure.
机译:本文考虑了在有限人群中使用潜在结果进行的随机实验的治疗对比的因果推断。通过采用将这种因果推理与有限总体调查抽样相结合的内曼重复抽样方法,为将实验单位分配给多种处理的一般机制开发了一个推理框架。该框架通过允许随机限制和不相等复制的可能性扩展了经典方法。得出了比严格的治疗效果“温和”的,但允许对任何治疗对比估计量的有限总体抽样方差进行无偏估计的新条件。还以最小最大偏差为标准研究了偏离这些条件的后果,并提供了在实验中使用内曼保守采样方差估计量的新理由。所提出的方法可以容易地扩展到具有一般析因结构的治疗情况。

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