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Activity Number: 42
Type: Contributed
Date/Time: Sunday, August 4, 2013 : 2:00 PM to 3:50 PM
Sponsor: Government Statistics Section
Abstract - #308277
Title: Matching for Balance, Pairing for Heterogeneity in an Observational Study of the Effectiveness of for-Profit and Not-for-Profit High Schools in Chile
Author(s): Jose Zubizarreta*+ and Ricardo Paredes and Paul Rosenbaum
Companies: The Wharton School, U. of Pennsylvania and Departamento de Ingenieria Industrial y Sistemas, Pontificia Universidad Catolica de Chile and The Wharton School, U. of Pennsylvania
Keywords: Design sensitivity ; integer programming ; matched sampling ; power of a sensitivity analysis ; observational study ; sensitivity analysis
Abstract:

Conventionally, the construction of a pair-matched sample selects treated and control units and pairs them in a single step with a view to balancing observed covariates x and reducing the heterogeneity or dispersion of treated-minus-control response differences, Y. In contrast, the method of cardinality matching developed here first selects the maximum number of units subject to covariate balance constraints, and with a balanced sample for x in hand, then separately pairs the units to minimize heterogeneity in Y. Reduced heterogeneity of pair differences in responses Y is known to reduce sensitivity to unmeasured biases, so one might hope that cardinality matching would succeed at both tasks, balancing x, stabilizing Y. We use cardinality matching in an observational study of the effectiveness of for-profit and not-for-profit private high schools in Chile --- a controversial subject in Chile --- focusing on students who were in government run primary schools in 2004 but then switched to private high schools. By pairing to minimize heterogeneity in a cardinality match that has balanced covariates, a meaningful reduction in sensitivity to unmeasured biases is obtained.


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