因果推理
工具变量
观察研究
推论
混淆
代理(统计)
稳健性(进化)
边际结构模型
计量经济学
利用
计算机科学
统计
数学
机器学习
人工智能
数据挖掘
基因
生物化学
化学
计算机安全
作者
Xiaochuan Shi,Dehan Kong,Linbo Wang
标识
DOI:10.1080/10618600.2024.2449074
摘要
Unmeasured confounding presents a significant challenge in causal inference from observational studies. Classical approaches often rely on collecting proxy variables, such as instrumental variables. However, in applications where the effects of multiple treatments are of simultaneous interest, finding a sufficient number of proxy variables for consistent estimation of treatment effects can be challenging. Various methods in the literature exploit the structure of multiple treatments to address unmeasured confounding. In this paper, we introduce a novel approach to causal inference with multiple treatments, assuming sparsity in the causal effects. Our procedure autonomously selects treatments with non-zero causal effects, thereby providing a sparse causal estimation. Comprehensive evaluations using both simulated and Genome-Wide Association Study (GWAS) datasets demonstrate the effectiveness and robustness of our method compared to alternative approaches.
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