Observational Learning in Large-Scale Congested Service Systems

IF 0.1 4区 工程技术 Q4 ENGINEERING, MANUFACTURING
Chen Jin, L. Debo, S. Iravani
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引用次数: 1

Abstract

We study the impact of observational learning in large scale congested service systems with servers having heterogenous quality levels and customers that are heterogonously informed about the server quality. Providing congestion information to all customers allows them to avoid congested servers, but, also implies that less informed customers learn about the quality from observing the choices of other customers. Due to an exponentially growing state space in the number of servers, identifying Bayesian equilibria is intractable with a large, discrete number of servers. In this paper, we develop a tractable model with a continuum of servers. We find that the impact of observational learning on the customers' choice behavior may lead to severe "imbalance" of server load in the system, such that a decentralized system significantly under-performs in terms of the social welfare, compared with a centralized system. The decentralized system performs well only when (a) either the congestion costs are high and there are sufficient informed customers, or (b) when the congestion costs are medium or low and the aggregate capacity of high-quality servers matches the aggregate demand of informed customers. We also find situations in which making more customers informed about service quality leads to a decrease in social welfare. Our paper highlights the tension between observational learning and social welfare maximization and thus observational learning in large-scale service systems might require intervention of the platform manager.
大规模拥挤服务系统中的观察学习
我们研究了大规模拥挤服务系统中观察学习的影响,其中服务器具有异构质量水平,客户对服务器质量的了解是异构的。向所有客户提供拥塞信息可以使他们避免服务器拥塞,但是,也意味着信息较少的客户通过观察其他客户的选择来了解质量。由于服务器数量的状态空间呈指数增长,对于大量离散的服务器,识别贝叶斯均衡是难以处理的。在本文中,我们开发了一个具有连续服务器的可处理模型。我们发现,观察学习对客户选择行为的影响可能导致系统中服务器负载的严重“不平衡”,使得去中心化系统在社会福利方面的表现明显低于集中化系统。只有当(a)拥塞成本高且有足够的知情客户,或(b)拥塞成本中等或较低且高质量服务器的总容量与知情客户的总需求相匹配时,分散系统才能表现良好。我们还发现,让更多的顾客了解服务质量会导致社会福利的减少。我们的论文强调了观察学习与社会福利最大化之间的紧张关系,因此大规模服务系统中的观察学习可能需要平台管理者的干预。
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
Manufacturing Engineering
Manufacturing Engineering 工程技术-工程:制造
自引率
0.00%
发文量
0
审稿时长
6-12 weeks
期刊介绍: Information not localized
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