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Is there a Causal Effect of High School Math on Labor Market Outcomes?

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  • Juanna Schrøter Joensen
  • Helena Skyt Nielsen

Abstract

In this paper, we exploit a high school pilot scheme to identify the causal effect of advanced high school math on labor market outcomes. The pilot scheme reduced the costs of choosing advanced math because it allowed for a more flexible combination of math with other courses. We find clear evidence of a causal relationship between math and earnings for students who are induced to choose math after being exposed to the pilot scheme. The effect partly stems from the fact that these students end up with a higher education.

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Bibliographic Info

Article provided by University of Wisconsin Press in its journal Journal of Human Resources.

Volume (Year): 44 (2009)
Issue (Month): 1 ()
Pages:

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Handle: RePEc:uwp:jhriss:v:44:y:2009:i1:p171-198

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Web page: http://jhr.uwpress.org/

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