倾向得分匹配
协变量
选择偏差
结果(博弈论)
匹配(统计)
观察研究
因果关系
计量经济学
背景(考古学)
心理学
统计
对比度(视觉)
向平均值回归
回归
因果推理
选择(遗传算法)
回归分析
人口
社会心理学
数学
计算机科学
人口学
人工智能
认识论
社会学
古生物学
数理经济学
哲学
生物
作者
Thomas D. Cook,Peter M. Steiner
摘要
In this article, we note the many ontological, epistemological, and methodological similarities between how Campbell and Rubin conceptualize causation. We then explore 3 differences in their written emphases about individual case matching in observational studies. We contend that (a) Campbell places greater emphasis than Rubin on the special role of pretest measures of outcome among matching variables; (b) Campbell is more explicitly concerned with unreliability in the covariates; and (c) for analyzing the outcome, only Rubin emphasizes the advantages of using propensity score over regression methods. To explore how well these 3 factors reduce bias, we reanalyze and review within-study comparisons that contrast experimental and statistically adjusted nonexperimental causal estimates from studies with the same target population and treatment content. In this context, the choice of covariates counts most for reducing selection bias, and the pretest usually plays a special role relative to all the other covariates considered singly. Unreliability in the covariates also influences bias reduction but by less. Furthermore, propensity score and regression methods produce comparable degrees of bias reduction, though these within-study comparisons may not have met the theoretically specified conditions most likely to produce differences due to analytic method.
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