Construction of Equilibria in Strategic Stackelberg Games in Multi-Period Supply Chain Contracts

IF 0.6 Q4 ECONOMICS
Games Pub Date : 2022-10-27 DOI:10.3390/g13060070
R. Gholami, L. Sandal, J. Ubøe
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引用次数: 1

Abstract

Almost every supplier faces uncertain and time-varying demand. E-commerce and online shopping have given suppliers unprecedented access to data on customers’ behavior, which sheds light on demand uncertainty. The main purpose of this research project is to provide an analytic tool for decentralized supply channel members to devise optimal long-term (multi-period) supply, pricing, and timing strategies while catering to stochastic demand in a diverse set of market scenarios. Despite its ubiquity in potential applications, the time-dependent channel optimization problem in its general form has received limited attention in the literature due to its complexity and the highly nested structure of its ensuing equilibrium problems. However, there are many scenarios where a single-period channel optimization solution may turn out to be myopic as it does not consider the after-effects of current pricing on future demand. To remedy this typical shortcoming, using general memory functions, we include the strategic customers’ cognitive bias toward pricing history in the supply channel equilibrium problem. In the form of two constructive theorems, we provide explicit solution algorithms for the ensuing Nash–Stackelberg equilibrium problems. In particular, we prove that our recursive solution algorithm can find equilibria in the multi-periodic variation of many standard supply channel contracts such as wholesale, buyback, and revenue-sharing contracts.
多周期供应链契约中战略Stackelberg博弈均衡的构建
几乎每个供应商都面临着不确定和时变的需求。电子商务和网上购物为供应商提供了前所未有的客户行为数据,这些数据揭示了需求的不确定性。本研究项目的主要目的是为分散的供应渠道成员提供一个分析工具,以设计最佳的长期(多时期)供应、定价和时机策略,同时满足不同市场情景下的随机需求。尽管它在潜在的应用中无处不在,但由于其复杂性和随之而来的平衡问题的高度嵌套结构,一般形式的时相关信道优化问题在文献中受到的关注有限。然而,在很多情况下,单周期渠道优化方案可能是短视的,因为它没有考虑当前定价对未来需求的后续影响。为了弥补这一典型缺陷,我们使用一般记忆函数,将战略客户对定价历史的认知偏差纳入供应渠道均衡问题。以两个构造性定理的形式,给出了Nash-Stackelberg均衡问题的显式解算法。特别是,我们证明了我们的递归求解算法可以在批发、回购和收益共享等多种标准供应渠道契约的多周期变化中找到均衡。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Games
Games Decision Sciences-Statistics, Probability and Uncertainty
CiteScore
1.60
自引率
11.10%
发文量
65
审稿时长
11 weeks
期刊介绍: Games (ISSN 2073-4336) is an international, peer-reviewed, quick-refereeing open access journal (free for readers), which provides an advanced forum for studies related to strategic interaction, game theory and its applications, and decision making. The aim is to provide an interdisciplinary forum for all behavioral sciences and related fields, including economics, psychology, political science, mathematics, computer science, and biology (including animal behavior). To guarantee a rapid refereeing and editorial process, Games follows standard publication practices in the natural sciences.
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