Nonparametric segmentation methods: Applications of unsupervised machine learning and revealed preference
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Nonparametric_Segmentation_Met ...
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Final Accepted Manuscript
Affiliation
Department of Agricultural and Resource Economics, University of ArizonaIssue Date
2021-08-18Keywords
fruit and vegetable consumptionrevealed preferences
segmentation
unsupervised machine learning
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WileyCitation
Blumberg, J., & Thompson, G. (2021). Nonparametric segmentation methods: Applications of unsupervised machine learning and revealed preference. American Journal of Agricultural Economics.Rights
© 2021 Agricultural & Applied Economics Association.Collection Information
This item from the UA Faculty Publications collection is made available by the University of Arizona with support from the University of Arizona Libraries. If you have questions, please contact us at repository@u.library.arizona.edu.Abstract
Many recent efforts by econometricians have focused on supervised machine learning techniques to aid in empirical studies using experimental data. By contrast, this article explores the merits of unsupervised machine learning algorithms for informing ex ante policy design using observational data. We examine the extent to which groups of consumers with differing responses to economic incentives can be identified in a context of fruit and vegetable demand. Two classes of nonparametric algorithms—revealed preference and unsupervised machine learning—are compared for segmenting households in the National Consumer Panel. Nonlinear almost-ideal demand models are estimated for all segments to determine which methods group households into segments with different expenditure and price elasticities. In-sample comparisons and out-of-sample prediction results indicate methods using price-quantity data alone—without demographic, geographic, or other variables—perform better at segmenting households into groups with sizeable differences in price and expenditure responsiveness. These segmentation results suggest considerable heterogeneity in household purchasing behavior of fruits and vegetables. © 2021 Agricultural & Applied Economics Association.Note
24 month embargo; first published: 18 August 2021ISSN
0002-9092EISSN
1467-8276Version
Final accepted manuscriptSponsors
Economic Research Serviceae974a485f413a2113503eed53cd6c53
10.1111/ajae.12257