Unveiling the Unobservable: Causal Inference on Multiple Derived Outcomes
收藏DataCite Commons2023-10-03 更新2024-08-18 收录
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https://tandf.figshare.com/articles/dataset/Unveiling_the_Unobservable_Causal_Inference_on_Multiple_Derived_Outcomes/24069466/1
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资源简介:
In many applications, the interest is in treatment effects on random quantities of subjects, where those random quantities are not directly observable but can be estimated based on data from each subject. In this article, we propose a general framework for conducting causal inference in a hierarchical data generation setting. The identifiability of causal parameters of interest is shown under a condition on the biasedness of subject level estimates and an ignorability condition on the treatment assignment. Estimation of the treatment effects is constructed by inverse propensity score weighting on the estimated subject level parameters. A multiple testing procedure able to control the false discovery proportion is proposed to identify the nonzero treatment effects. Theoretical results are developed to investigate the proposed procedure, and numerical simulations are carried out to evaluate its empirical performance. A case study of medication effects on brain functional connectivity of patients with Autism spectrum disorder (ASD) using fMRI data is conducted to demonstrate the utility of the proposed method. Supplementary materials for this article are available online.
提供机构:
Taylor & Francis
创建时间:
2023-08-31



