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Modern Algorithms for Matching in Observational Studies
Annual Review of Statistics and Its Application ( IF 7.4 ) Pub Date : 2020-03-09 , DOI: 10.1146/annurev-statistics-031219-041058
Paul R. Rosenbaum 1
Affiliation  

Using a small example as an illustration, this article reviews multivariate matching from the perspective of a working scientist who wishes to make effective use of available methods. The several goals of multivariate matching are discussed. Matching tools are reviewed, including propensity scores, covariate distances, fine balance, and related methods such as near-fine and refined balance, exact and near-exact matching, tactics addressing missing covariate values, the entire number, and checks of covariate balance. Matching structures are described, such as matching with a variable number of controls, full matching, subset matching and risk-set matching. Software packages in R are described. A brief review is given of the theory underlying propensity scores and the associated sensitivity analysis concerning an unobserved covariate omitted from the propensity score.

中文翻译:


观测研究中的现代匹配算法

本文以一个小例子为例,从希望有效利用可用方法的工作科学家的角度审视多变量匹配。讨论了多元匹配的几个目标。审查了匹配工具,包括倾向得分,协变量距离,精细平衡以及相关方法,例如近精细平衡和精确平衡,精确和近似精确匹配,解决缺失的协变量值的策略,整数以及对协变量平衡的检查。描述了匹配结构,例如与可变数量的控件匹配,完全匹配,子集匹配和风险集匹配。描述了R中的软件包。

更新日期:2020-03-09
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