因果推理
工具变量
观察研究
计算机科学
推论
杠杆(统计)
结果(博弈论)
计量经济学
人工智能
机器学习
混淆
变量(数学)
统计
数学
数学分析
数理经济学
作者
Adi Lin,Jie Lü,Junyu Xuan,Fujin Zhu,Guangquan Zhang
标识
DOI:10.1109/icdm.2019.00052
摘要
Causal inference from observational data aims to estimate causal effects when controlled experimentation is not feasible, but it faces challenges when unobserved confounders exist. The instrumental variable method resolves this problem by introducing a variable that is correlated with the treatment and affects the outcome only through the treatment. However, existing instrumental variable methods require two stages to separately estimate the conditional treatment distribution and the outcome generating function, which is not sufficiently effective. This paper presents a one-stage approach to jointly estimate the treatment distribution and the outcome generating function through a cleverly designed deep neural network structure. This study is the first to merge the two stages to leverage the outcome to the treatment distribution estimation. Further, the new deep neural network architecture is designed with two strategies (i.e., shared and separate) of learning a confounder representation account for different observational data. Such network architecture can unveil complex relationships between confounders, treatments, and outcomes. Experimental results show that our proposed method outperforms the state-of-the-art methods. It has a wide range of applications, from medical treatment design to policy making, population regulation and beyond.
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