On Rosenbaum’s Rank-based Matching Estimator

Matias Cattaneo Co-Author
Princeton University
 
Fang Han Co-Author
University of Washington
 
Zhexiao Lin First Author
 
Zhexiao Lin Presenting Author
 
Monday, Aug 5: 9:20 AM - 9:35 AM
3348 
Contributed Papers 
Oregon Convention Center 
In two influential contributions, Rosenbaum (2005, 2020) advocated for using the distances between component-wise ranks, instead of the original data values, to measure covariate similarity when constructing matching estimators of average treatment effects. While the intuitive benefits of using covariate ranks for matching estimation are apparent, there is no theoretical understanding of such procedures in the literature. We fill this gap by demonstrating that Rosenbaum's rank-based matching estimator, when coupled with a regression adjustment, enjoys the properties of double robustness and semiparametric efficiency without the need to enforce restrictive covariate moment assumptions. Our theoretical findings further emphasize the statistical virtues of employing ranks for estimation and inference, more broadly aligning with the insights put forth by Peter Bickel in his 2004 Rietz lecture (Bickel, 2004).

Keywords

rank-based statistics

matching estimators

average treatment effect

regression adjustment

semiparametric efficiency 

Main Sponsor

IMS