Confidence-based optimisation for the newsvendor problem under binomial,Poisson and exponential demand |
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Authors: | Roberto Rossi Steven Prestwich S. Armagan Tarim Brahim Hnich |
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Affiliation: | 1. Business School, University of Edinburgh, United Kingdom;2. Insight Centre for Data Analytics, University College Cork, Ireland;3. Institute of Population Studies, Hacettepe University, Turkey;4. Department of Computer Engineering, Izmir University of Economics, Turkey |
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Abstract: | ![]() We introduce a novel strategy to address the issue of demand estimation in single-item single-period stochastic inventory optimisation problems. Our strategy analytically combines confidence interval analysis and inventory optimisation. We assume that the decision maker is given a set of past demand samples and we employ confidence interval analysis in order to identify a range of candidate order quantities that, with prescribed confidence probability, includes the real optimal order quantity for the underlying stochastic demand process with unknown stationary parameter(s). In addition, for each candidate order quantity that is identified, our approach produces an upper and a lower bound for the associated cost. We apply this approach to three demand distributions in the exponential family: binomial, Poisson, and exponential. For two of these distributions we also discuss the extension to the case of unobserved lost sales. Numerical examples are presented in which we show how our approach complements existing frequentist—e.g. based on maximum likelihood estimators—or Bayesian strategies. |
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Keywords: | Inventory control Newsvendor problem Confidence interval analysis Demand estimation Sampling |
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