倾向得分匹配
观察研究
协变量
Boosting(机器学习)
回归
心理学
选择偏差
统计
回归分析
估计
药物滥用
计量经济学
机器学习
数学
计算机科学
精神科
经济
管理
作者
Daniel F. McCaffrey,Greg Ridgeway,Andrew R. Morral
出处
期刊:Psychological Methods
[American Psychological Association]
日期:2004-12-01
卷期号:9 (4): 403-425
被引量:1270
标识
DOI:10.1037/1082-989x.9.4.403
摘要
Causal effect modeling with naturalistic rather than experimental data is challenging. In observational studies participants in different treatment conditions may also differ on pretreatment characteristics that influence outcomes. Propensity score methods can theoretically eliminate these confounds for all observed covariates, but accurate estimation of propensity scores is impeded by large numbers of covariates, uncertain functional forms for their associations with treatment selection, and other problems. This article demonstrates that boosting, a modern statistical technique, can overcome many of these obstacles. The authors illustrate this approach with a study of adolescent probationers in substance abuse treatment programs. Propensity score weights estimated using boosting eliminate most pretreatment group differences and substantially alter the apparent relative effects of adolescent substance abuse treatment.
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