因果推理
观察研究
倾向得分匹配
计算机科学
匹配(统计)
统计推断
推论
因果模型
缺少数据
限制
随机化
计量经济学
数据科学
临床试验
医学
统计
机器学习
人工智能
数学
机械工程
工程类
病理
作者
Roderick J. A. Little,Donald B. Rubin
标识
DOI:10.1146/annurev.publhealth.21.1.121
摘要
A central problem in public health studies is how to make inferences about the causal effects of treatments or agents. In this article we review an approach to making such inferences via potential outcomes. In this approach, the causal effect is defined as a comparison of results from two or more alternative treatments, with only one of the results actually observed. We discuss the application of this approach to a number of data collection designs and associated problems commonly encountered in clinical research and epidemiology. Topics considered include the fundamental role of the assignment mechanism, in particular the importance of randomization as an unconfounded method of assignment; randomization-based and model-based methods of statistical inference for causal effects; methods for handling noncompliance and missing data; and methods for limiting bias in the analysis of observational data, including propensity score matching and sensitivity analysis.
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