Bayesian dithering for learning : asymptotically optimal policies in dynamic pricing
Year of publication: |
2022
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Authors: | Huh, Woonghee Tim ; Kim, Michael Jong ; Lin, Meichun |
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. 31.2022, 9, p. 3576-3593
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Subject: | Bayesian learning | dynamic pricing | exploration-exploitation | regret analysis | Lernprozess | Learning process | Bayes-Statistik | Bayesian inference | Preismanagement | Pricing strategy | Dynamische Wirtschaftstheorie | Economic dynamics | Lernen | Learning |
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