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Allocation of Residency Training Positions in Spain: Contextual Effects on Specialty Preferences

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  • Jeffrey E. Harris
  • Beatriz G. Lopez‐Valcarcel
  • Patricia Barber
  • Vicente Ortún

Abstract

In Spain's ‘MIR’ system, medical school graduates are ranked by their performance on a national exam and then sequentially choose from the available residency training positions. We took advantage of a unique survey of participants in the 2012 annual MIR cycle to analyze preferences under two different choice scenarios: the residency program actually chosen by each participant when it came her turn (the ‘real’) and the program that she would have chosen if all residency training programs had been available (the ‘counterfactual’). Utilizing conditional logit models with random coefficients, we found significant differences in medical graduates' preferences between the two scenarios, particularly with respect to three specialty attributes: work hours/lifestyle, prestige among colleagues, and annual remuneration. In the counterfactual world, these attributes were valued preferentially by those nearer to the top, while in the real world, they were valued preferentially by graduates nearer to the bottom of the national ranking. Medical graduates' specialty preferences, which we conclude, are not intrinsically stable but depend critically on the ‘rules of the game’. The MIR assignment system, by restricting choice, effectively creates an externality in which those at the bottom, who have fewer choices, want what those at the top already have. Copyright © 2016 John Wiley & Sons, Ltd.

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  • Jeffrey E. Harris & Beatriz G. Lopez‐Valcarcel & Patricia Barber & Vicente Ortún, 2017. "Allocation of Residency Training Positions in Spain: Contextual Effects on Specialty Preferences," Health Economics, John Wiley & Sons, Ltd., vol. 26(3), pages 371-386, March.
  • Handle: RePEc:wly:hlthec:v:26:y:2017:i:3:p:371-386
    DOI: 10.1002/hec.3318
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    Cited by:

    1. Josep Amer-Mestre and Agnès Charpin, 2022. "Gender Differences in Early Occupational Choices: Evidence from Medical Specialty Selection," Economics Working Papers EUI ECO 2022/01, European University Institute.

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