Documentos de trabajo
Large sample properties of an optimization-based matching
Fecha
2014Registro en:
Serie Documentos de Trabajo Vol. 389, pp. 1 - 24, Noviembre, 2014
Autor
Cominetti Cotti-Cometti, Roberto
Díaz Maureira, Juan
Rivera Cayupi, Jorge
Institución
Resumen
This paper mainly concerns the the asymptotic properties of the BLOP matching estimator
introduced by D´ıaz, Rau & Rivera (Forthcoming), showing that this estimator of the ATE attains
the standard limit properties, and that its conditional bias is Op(N !2/k), with k the dimension
of continuous covariates. Even though this estimator is not p
N-consistent in general, when
the order of magnitude of the numbers of control units is bigger than the one of treated units,
we show that the BLOP matching estimator of ATT is p
N-consistent. Finally, for a general
nonparametric setting, the conditional bias of matching estimators that use a constant number of
matches to perform the potential outcomes cannot attain the aforementioned stochastic orders,
regardless of the weighting schemes used to perform the potential outcomes. The proof of these
results uses novel contributions in the field of geometric probability theory we provide in this
work. Our results improve the obtained by Abadie & Imbens (2006) when studying the limit
properties of the well known NN-matching estimator.