不确定条件下的单期产能与需求分配决策

Sangdo Choi
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引用次数: 0

摘要

报贩模型处理的是不确定条件下的单周期容量分配问题。现实世界的例子包括易腐烂的产品(例如,鱼、蔬菜)、假日相关产品(例如,复活节、圣诞节、万圣节)、季节性产品(例如,时装)和促销产品。本节讨论三种报贩模型:传统报贩、反向报贩和顺序报贩模型。传统新闻供应商设置下的主要决策是容量分配(即订购多少),而反向新闻供应商设置下的主要决策是需求分配(即在固定容量下需要服务多少客户)。本节将演示如何比较传统报摊下的利润最大化方法与以客户为导向的方法。反向报贩适用于酒店业的收入管理。序列新闻供应商模型确定了当服务的客户数量(由逆新闻供应商模型确定)给定时的最优顺序。在解析解和数值研究中考虑正态分布。此外,在数值研究中考虑了离散分布。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Single-Period Capacity and Demand Allocation Decision Making under Uncertainty
The newsvendor model deals with a single-period capacity allocation problem under uncertainty. The real world examples include perishable products (e.g., fish, vegetable), holiday-related products (e.g., Easter, Christmas, Halloween), seasonal products (e.g., fashion), and promotional products. This section addresses three newsvendor models: traditional newsvendor, inverse newsvendor, and sequential newsvendor models. The main decision under the traditional newsvendor setting is capacity allocation (i.e., how much to order), whereas the main decision under the inverse newsvendor setting is demand allocation (i.e., how many customers to be served) under the fixed capacity. This section demonstrates how to compare profit maximization approach to customer-oriented approach under the traditional newsvendor. The inverse newsvendor applies to revenue management for the hospitality industry. The sequential newsvendor model determines the optimal sequence when the number of customers to be served (determined by the inverse newsvendor model) is given. Normal distribution is considered for analytical solution and numerical studies. In addition, a discrete distribution is considered for numerical studies.
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