论文标题
通过先前加权系统设计平衡生产商的公平和效率
Balancing Producer Fairness and Efficiency via Prior-Weighted Rating System Design
论文作者
论文摘要
在线市场使用评级系统来促进发现高质量产品。但是,这些系统也导致生产者的经济成果的差异很大:销售高质量商品的新生产商可能会很早就获得低评分,从而严重影响其未来的受欢迎程度。我们研究了平衡识别高质量产品(``效率'')目标的评级系统的设计,并最大程度地减少具有相似质量的生产商(个人``生产者公平'')的结果的差异。 我们表明,这两个目标之间存在权衡:促进效率的评级系统对生产者来说一定是个人公平的。我们介绍了先前的加权评级系统,以管理这种权衡。非正式地,我们提出的系统设置了传入产品质量的整个系统。随后,该系统会根据用户生成的评级随时间更新每种产品的质量。从理论上讲,在市场上,产品以相等的速度进行评估的市场,评级系统的先验的强度决定了已确定的权衡方面的工作点:越强,市场越强,市场折扣的早期评级数据(提高个人公平性),但平台在学习真实项目质量(因此效率较高(因此)。我们在响应迅速的市场中进一步分析了这一权衡,在该市场中,客户根据历史评级做出决策。通过来自大型在线平台的19个不同现实世界中的校准模拟,我们表明,在这种情况下,先前强度的选择可以介导相同的效率一致性权衡。总体而言,我们证明,通过将先前的评级选择在先前的加权系统中调整为设计选择,平台可以意识到效率和生产者公平之间的平衡。
Online marketplaces use rating systems to promote the discovery of high-quality products. However, these systems also lead to high variance in producers' economic outcomes: a new producer who sells high-quality items, may unluckily receive a low rating early, severely impacting their future popularity. We investigate the design of rating systems that balance the goals of identifying high-quality products (``efficiency'') and minimizing the variance in outcomes of producers of similar quality (individual ``producer fairness''). We show that there is a trade-off between these two goals: rating systems that promote efficiency are necessarily less individually fair to producers. We introduce prior-weighted rating systems as an approach to managing this trade-off. Informally, the system we propose sets a system-wide prior for the quality of an incoming product; subsequently, the system updates that prior to a posterior for each product's quality based on user-generated ratings over time. We show theoretically that in markets where products accrue reviews at an equal rate, the strength of the rating system's prior determines the operating point on the identified trade-off: the stronger the prior, the more the marketplace discounts early ratings data (increasing individual fairness), but the slower the platform is in learning about true item quality (so efficiency suffers). We further analyze this trade-off in a responsive market where customers make decisions based on historical ratings. Through calibrated simulations in 19 different real-world datasets sourced from large online platforms, we show that the choice of prior strength mediates the same efficiency-consistency trade-off in this setting. Overall, we demonstrate that by tuning the prior as a design choice in a prior-weighted rating system, platforms can be intentional about the balance between efficiency and producer fairness.