Fast rates for contextual linear optimization
Year of publication: |
2022
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Authors: | Hu, Yichun ; Kallus, Nathan ; Mao, Xiaojie |
Published in: |
Management science : journal of the Institute for Operations Research and the Management Sciences. - Hanover, Md. : INFORMS, ISSN 1526-5501, ZDB-ID 2023019-9. - Vol. 68.2022, 6, p. 4236-4245
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Subject: | contextual stochastic optimization | end-to-end optimization | estimate and then optimize | personalized decision making | Theorie | Theory | Mathematische Optimierung | Mathematical programming | Stochastischer Prozess | Stochastic process | Entscheidung | Decision |
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