一般化
代表(政治)
推论
有界函数
算法
因果推理
计算机科学
近似推理
简单(哲学)
泛化误差
数学
人工智能
统计
人工神经网络
数学分析
哲学
认识论
政治
政治学
法学
作者
Uri Shalit,Fredrik Johansson,David Sontag
出处
期刊:Cornell University - arXiv
日期:2016-01-01
被引量:401
标识
DOI:10.48550/arxiv.1606.03976
摘要
There is intense interest in applying machine learning to problems of causal inference in fields such as healthcare, economics and education. In particular, individual-level causal inference has important applications such as precision medicine. We give a new theoretical analysis and family of algorithms for predicting individual treatment effect (ITE) from observational data, under the assumption known as strong ignorability. The algorithms learn a "balanced" representation such that the induced treated and control distributions look similar. We give a novel, simple and intuitive generalization-error bound showing that the expected ITE estimation error of a representation is bounded by a sum of the standard generalization-error of that representation and the distance between the treated and control distributions induced by the representation. We use Integral Probability Metrics to measure distances between distributions, deriving explicit bounds for the Wasserstein and Maximum Mean Discrepancy (MMD) distances. Experiments on real and simulated data show the new algorithms match or outperform the state-of-the-art.
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