The Coin of AI Has Two Sides: Matching Enhancement and Information Revelation Effects of AI on Gig-Economy Platforms

Yi Liu, Xinyi Zhao, Bowen Lou, Xinxin Li
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引用次数: 2

Abstract

Artificial intelligence (AI) has been increasingly integrated into the process of matching between workers and employers requesting job tasks on a gig-economy platform. Unlike the conventional wisdom that adopting AI in the matching process always benefits the platform by assigning better-matched jobs (employers) to workers, we discover unintended but possible revenue-decreasing consequences for the AI-adopting platform. We build a stylized game theoretical model that considers gig workers’ strategic participation behavior. We find that while the matching enhancement effect of AI can increase the platform’s revenue by improving matching quality, AI-assigned jobs can also reveal information about the uncertain labor demand to workers and thus unfavorably change workers’ participation decisions, resulting in revenue loss for the platform. We extend our model to the cases where (1) the share of revenue between workers and platform is endogenous and (2) the workers compete for the job tasks, and find consistent results. Furthermore, we examine two approaches to mitigate the potential negative effect of AI-enabled matching for the platform and find that under certain conditions, the AI-adopting platform can be better off by revealing the labor demand or competition information directly to workers. Our results shed light on both the intended positive and unintended negative roles of utilizing AI to facilitate matching, and highlight the importance of thoughtful development, management, and application of AI in the gig economy.
人工智能的硬币有两面性:人工智能对零工经济平台的匹配增强和信息启示效应
在一个零工经济平台上,人工智能(AI)越来越多地融入到工人和雇主之间的匹配过程中。与传统观点不同的是,在匹配过程中采用人工智能总是通过为工人分配更匹配的工作(雇主)而使平台受益,我们发现了采用人工智能的平台意想不到但可能减少收入的后果。我们建立了一个程式化的博弈论模型,考虑零工工人的战略参与行为。我们发现,虽然人工智能的匹配增强效应可以通过提高匹配质量来增加平台的收入,但人工智能分配的工作也会向工人透露不确定的劳动力需求信息,从而对工人的参与决策产生不利影响,导致平台的收入损失。我们将模型扩展到以下情况:(1)工人和平台之间的收入份额是内生的(2)工人竞争工作任务,并找到一致的结果。此外,我们研究了两种方法来减轻人工智能匹配对平台的潜在负面影响,并发现在某些条件下,采用人工智能的平台可以通过直接向工人透露劳动力需求或竞争信息来获得更好的收益。我们的研究结果揭示了利用人工智能促进匹配的预期积极和意想不到的消极作用,并强调了人工智能在零工经济中深思熟虑的开发、管理和应用的重要性。
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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