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Maximum entropy in the mean methods in propensity score matching for interval and noisy data
Authors:Laura H Gunn  Henryk Gzyl  Enrique ter Horst  Miller Janny Ariza
Institution:1. Department of Public Health Sciences, University of North Carolina at Charlotte, Charlotte, NC, USA;2. School of Public Health, Faculty of Medicine, Imperial College London, London, UK;3. Centro de Finanzas, IESA, Caracas, Venezuela;4. University of the Andes School of Management (Uniandes), Bogotá, Colombia;5. Ingenieria Financiera, Universidad Piloto de Colombia, Bogotá, Colombia
Abstract:Abstract

In this paper, we propose maximum entropy in the mean methods for propensity score matching classification problems. We provide a new methodological approach and estimation algorithms to handle explicitly cases when data is available: (i) in interval form; (ii) with bounded measurement or observational errors; or (iii) both as intervals and with bounded errors. We show that entropy in the mean methods for these three cases generally outperform benchmark error-free approaches.
Keywords:Propensity score matching  observational studies  maximum entropy in the mean  data with bounded errors  interval data
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