Algorithmic Writing Assistance on Jobseekers' Resumes Increases Hires
Emma van Inwegen,
Zanele Munyikwa and
John J. Horton
Papers from arXiv.org
Abstract:
There is a strong association between the quality of the writing in a resume for new labor market entrants and whether those entrants are ultimately hired. We show that this relationship is, at least partially, causal: a field experiment in an online labor market was conducted with nearly half a million jobseekers in which a treated group received algorithmic writing assistance. Treated jobseekers experienced an 8% increase in the probability of getting hired. Contrary to concerns that the assistance is taking away a valuable signal, we find no evidence that employers were less satisfied. We present a model in which better writing is not a signal of ability but helps employers ascertain ability, which rationalizes our findings.
Date: 2023-01
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Persistent link: https://EconPapers.repec.org/RePEc:arx:papers:2301.08083
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