A machine learning approach to deal with ambiguity in the humanitarian decision-making
Year of publication: |
2023
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Authors: | Graß, Emilia ; Ortmann, Janosch ; Balcik, Burcu ; Rei, Walter |
Published in: |
Production and operations management : the flagship research journal of the Production and Operations Management Society. - London : Sage Publications, ISSN 1937-5956, ZDB-ID 2151364-8. - Vol. 32.2023, 9, p. 2956-2974
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Subject: | ambiguity | clustering | data aggregation | humanitarian decision-making | needs assessment | Humanitäre Hilfe | Humanitarian aid | Künstliche Intelligenz | Artificial intelligence | Entscheidung | Decision | Entscheidung unter Unsicherheit | Decision under uncertainty | Entscheidungstheorie | Decision theory | Clusteranalyse | Cluster analysis |
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