论文标题

数字市场的竞争,一致性和平衡

Competition, Alignment, and Equilibria in Digital Marketplaces

论文作者

Jagadeesan, Meena, Jordan, Michael I., Haghtalab, Nika

论文摘要

众所周知,传统平台之间的竞争可以通过将平台的操作与用户偏好保持一致,从而改善用户实用性。但是,在数据驱动的市场中表现出多大的一致性?为了从理论角度研究这个问题,我们介绍了一个双重垄断市场,平台动作是Bandit算法,两个平台竞争用户参与。该市场的一个显着特征是,建议的质量取决于Bandit算法和用户交互提供的数据量。算法性能与用户的动作之间的这种相互依赖性使市场平衡的结构及其在用户公用事业方面的质量复杂化。我们的主要发现是,该市场的竞争并不能完全使市场成果与用户实用程序保持一致。有趣的是,市场成果不仅在平台具有单独的数据存储库时,而且在平台具有共享数据存储库时表现不对。但是,数据共享假设会影响哪种机制驱动未对准的机制,并影响未对准的特定形式(例如,最佳案例和最差的市场成果的质量)。从更广泛的角度来看,我们的工作表明,数字市场的竞争对用户公用事业的影响很大,值得进一步调查。

Competition between traditional platforms is known to improve user utility by aligning the platform's actions with user preferences. But to what extent is alignment exhibited in data-driven marketplaces? To study this question from a theoretical perspective, we introduce a duopoly market where platform actions are bandit algorithms and the two platforms compete for user participation. A salient feature of this market is that the quality of recommendations depends on both the bandit algorithm and the amount of data provided by interactions from users. This interdependency between the algorithm performance and the actions of users complicates the structure of market equilibria and their quality in terms of user utility. Our main finding is that competition in this market does not perfectly align market outcomes with user utility. Interestingly, market outcomes exhibit misalignment not only when the platforms have separate data repositories, but also when the platforms have a shared data repository. Nonetheless, the data sharing assumptions impact what mechanism drives misalignment and also affect the specific form of misalignment (e.g. the quality of the best-case and worst-case market outcomes). More broadly, our work illustrates that competition in digital marketplaces has subtle consequences for user utility that merit further investigation.

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