Nearest neighbor (NN) matching is widely used in observational studies for causal effects. Abadie and Imbens (2006) provided the first large‐sample analysis of NN matching. Their theory focuses on the case with the number of NNs, M fixed. We reveal something new out of their study and show that once allowing M to diverge with the sample size an intrinsic statistic in their analysis constitutes a consistent estimator of the density ratio with regard to covariates across the treated and control groups. Consequently, with a diverging M, the NN matching with Abadie and Imbens' (2011) bias correction yields a doubly robust estimator of the average treatment effect and is semiparametrically efficient if the density functions are sufficiently smooth and the outcome model is consistently estimated. It can thus be viewed as a precursor of the double machine learning estimators.
MLA
Lin, Zhexiao, et al. “Estimation Based on Nearest Neighbor Matching: from Density Ratio to Average Treatment Effect.” Econometrica, vol. 91, .no 6, Econometric Society, 2023, pp. 2187-2217, https://doi.org/10.3982/ECTA20598
Chicago
Lin, Zhexiao, Peng Ding, and Fang Han. “Estimation Based on Nearest Neighbor Matching: from Density Ratio to Average Treatment Effect.” Econometrica, 91, .no 6, (Econometric Society: 2023), 2187-2217. https://doi.org/10.3982/ECTA20598
APA
Lin, Z., Ding, P., & Han, F. (2023). Estimation Based on Nearest Neighbor Matching: from Density Ratio to Average Treatment Effect. Econometrica, 91(6), 2187-2217. https://doi.org/10.3982/ECTA20598
Supplement to "Estimation Based on Nearest Neighbor Matching: from Density Ratio to Average Treatment Effect"
Zhexiao Lin, Peng Ding, and Fang Han
The replication package for this paper is available at https://doi.org/10.5281/zenodo.8322609. The authors were granted an exemption to publish parts of their data because either access to these data is restricted or the authors do not have the right to republish them. Therefore, the replication package only includes the codes and the parts of the data that are not subject to the exemption. However, the authors provided the Journal with (or assisted the Journal to obtain) temporary access to the restricted data. The Journal checked the provided and restricted data and the codes for their ability to reproduce the results in the paper and approved online appendices.
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