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Journal of Economic Growth

, Volume 23, Issue 3, pp 307–339 | Cite as

High-school genetic diversity and later-life student outcomes: micro-level evidence from the Wisconsin Longitudinal Study

  • C. Justin Cook
  • Jason M. Fletcher
Article
  • 207 Downloads

Abstract

A novel hypothesis posits that levels of genetic diversity in a population may partially explain variation in the development and success of countries. Our paper extends evidence on this question by subjecting the hypothesis to an alternative context that eliminates many competing hypotheses. We do this by aggregating representative individual-level data for high schools from a single US state (Wisconsin) in 1957, when the population was composed nearly entirely of individuals of European ancestry. Using this sample of high school aggregations, we too find a strong association between school-level genetic diversity and a range of student socioeconomic outcomes. Our use of survey data also allows for a greater exploration into the potential mechanisms of genetic diversity. In doing so, we find positive associations between genetic diversity and indexes for openness to experience and extraversion, two personality traits tied to creativity and divergent thinking.

Keywords

Genetic diversity Years of schooling Income Personality Survey data 

JEL Codes

J11 N30 O10 Z13 

Supplementary material

10887_2018_9157_MOESM1_ESM.pdf (241 kb)
Supplementary material 1 (PDF 240 kb)

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Copyright information

© Springer Science+Business Media, LLC, part of Springer Nature 2018

Authors and Affiliations

  1. 1.University of California-MercedMercedUSA
  2. 2.University of Wisconsin-MadisonMadisonUSA

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