Machine learning for food security : Principles for transparency and usability
Year of publication: |
2021
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---|---|
Authors: | Zhou, Yujun ; Lentz, Erin ; Michelson, Hope ; Kim, Chungmann ; Baylis, Kathy |
Published in: |
Applied Economic Perspectives and Policy. - Wiley, ISSN 2040-5804, ZDB-ID 2529839-2. - Vol. 44.2021, 2 (30.11.), p. 893-910
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Publisher: |
Wiley |
Saved in:
Online Resource
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