礼貌还是粗鲁?管理用户行为以提高按需服务平台的性能

Manag. Sci. Pub Date : 2022-03-25 DOI:10.1287/mnsc.2022.4391
Yunke Mai, Bin Hu, S. Pekec
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引用次数: 11

摘要

本文研究了按需服务平台如何通过对用户行为的管理来提高其性能。在这样的平台中,服务提供商可以拒绝某些平台提出的服务请求,而他们的回应反过来又激励用户调整他们的行为。我们开发了一个用户行为和提供商反应的进化博弈论模型,该模型表明,平台可以通过为服务提供商设定低工资或实施优先匹配来改善用户行为。在这些结果的基础上,我们再次利用进化博弈论的方法,进一步建立了提供者和用户加入和离开平台的模型。我们发现,通过管理用户行为来提高平台绩效,单独设定工资是一种钝器,而通过优先匹配来补充工资决策可以克服其局限性,并作为进一步提高平台增长和盈利能力的有效策略。这一发现表明,匹配优先级可能是管理具有用户和提供商异构性的平台的重要策略。此外,我们的分析和结果还证明了进化博弈论方法在分析定价和匹配决策对大型市场绩效的影响方面的潜力。本文被收益管理和市场分析专业的Gabriel Weintraub接受。
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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Courteous or Crude? Managing User Conduct to Improve On-Demand Service Platform Performance
In this paper, we study how an on-demand service platform could improve its performance through managing user conduct. In such a platform, service providers may reject certain platform-proposed service requests, and their responses, in turn, incentivize users to adjust their conduct. We develop an evolutionary game theory model of user conduct and provider responses that shows that the platform could improve user conduct through either setting a low wage for service providers or implementing priority matching. Building upon these results, we further model providers and users joining and leaving the platform by once again utilizing the evolutionary game theory approach. We find that wage setting alone is a blunt instrument to improve platform performance via managing user conduct, whereas supplementing the wage decision with priority matching could overcome its limitations and serve as an effective strategy to further improve platform performance in terms of growth and profitability. This finding suggests that matching prioritization could be an important strategy for managing platforms with user and provider heterogeneities. In addition, our analysis and results also demonstrate the potential of the evolutionary game theory approach for analyzing the impact of pricing and matching decisions on the performance of large markets. This paper was accepted by Gabriel Weintraub, revenue management and market analytics.
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