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Productivity and Selection of Human Capital with Machine Learning
Author(s) -
Aaron Chalfin,
Oren Danieli,
Andrew Hillis,
Zubin Jelveh,
Michael Luca,
Jens Ludwig,
Sendhil Mullainathan
Publication year - 2016
Publication title -
american economic review
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 16.936
H-Index - 297
eISSN - 1944-7981
pISSN - 0002-8282
DOI - 10.1257/aer.p20161029
Subject(s) - productivity , economics , marginal product , human capital , welfare , production (economics) , selection (genetic algorithm) , learning effect , labour economics , microeconomics , computer science , macroeconomics , economic growth , artificial intelligence , market economy
Economists have become increasingly interested in studying the nature of production functions in social policy applications, with the goal of improving productivity. Traditionally models have assumed workers are homogenous inputs. However, in practice, substantial variability in productivity means the marginal productivity of labor depends substantially on which new workers are hired--which requires not an estimate of a causal effect, but rather a prediction. We demonstrate that there can be large social welfare gains from using machine learning tools to predict worker productivity, using data from two important applications - police hiring and teacher tenure decisions.

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