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Causal Inference for Aggregated Treatment

Causal Inference for Aggregated Treatment

来源:Arxiv_logoArxiv
英文摘要

In this paper, we study causal inference when the treatment variable is an aggregation of multiple sub-treatment variables. Researchers often report marginal causal effects for the aggregated treatment, implicitly assuming that the target parameter corresponds to a well-defined average of sub-treatment effects. We show that, even in an ideal scenario for causal inference such as random assignment, the weights underlying this average have some key undesirable properties: they are not unique, they can be negative, and, holding all else constant, these issues become exponentially more likely to occur as the number of sub-treatments increases and the support of each sub-treatment grows. We propose approaches to avoid these problems, depending on whether or not the sub-treatment variables are observed.

Carolina Caetano、Gregorio Caetano、Brantly Callaway、Derek Dyal

数学

Carolina Caetano,Gregorio Caetano,Brantly Callaway,Derek Dyal.Causal Inference for Aggregated Treatment[EB/OL].(2025-06-28)[2025-07-17].https://arxiv.org/abs/2506.22885.点此复制

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