工具变量
协方差
计算机科学
加权
因果推理
广义矩量法
力矩(物理)
变量(数学)
算法
特征选择
反向
数学优化
选择(遗传算法)
数学
人工智能
机器学习
计量经济学
统计
物理
医学
放射科
面板数据
经典力学
几何学
数学分析
作者
Andrew Bennett,Nathan Kallus,Tobias Schnabel
出处
期刊:Cornell University - arXiv
日期:2019-05-29
被引量:31
标识
DOI:10.48550/arxiv.1905.12495
摘要
Instrumental variable analysis is a powerful tool for estimating causal effects when randomization or full control of confounders is not possible. The application of standard methods such as 2SLS, GMM, and more recent variants are significantly impeded when the causal effects are complex, the instruments are high-dimensional, and/or the treatment is high-dimensional. In this paper, we propose the DeepGMM algorithm to overcome this. Our algorithm is based on a new variational reformulation of GMM with optimal inverse-covariance weighting that allows us to efficiently control very many moment conditions. We further develop practical techniques for optimization and model selection that make it particularly successful in practice. Our algorithm is also computationally tractable and can handle large-scale datasets. Numerical results show our algorithm matches the performance of the best tuned methods in standard settings and continues to work in high-dimensional settings where even recent methods break.
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