论文标题
推荐系统中的供应方平衡
Supply-Side Equilibria in Recommender Systems
论文作者
论文摘要
Spotify和Netflix等算法推荐系统不仅会影响消费者行为,还会影响生产者的激励措施。生产商试图创建建议算法将显示的内容,这可能会影响其内容的多样性和质量。在这项工作中,我们调查了个性化内容系统中所得的供应方均衡。我们将用户和内容建模为$ d $维矢量,推荐算法向每个用户展示了最高点产品的内容,而生产商则最大程度地提高了建议的内容的用户数量,这些用户数量减去了生产成本。我们模型的两个关键特征是生产者的决策空间是多维的,用户群是异质的,与经典的低维模型形成鲜明对比。 多维性和异质性创造了专业化的潜力,其中不同的生产者在平衡时创造了不同类型的内容。使用二元论证,我们为是否发生专业化提供了必要的条件:这些条件取决于用户在多大质上的程度,以及生产者可以立即在所有维度上表现良好而不会产生高成本。然后,我们表征了与两个用户人群的混凝土设置中的内容分布。最后,我们表明专业化可以使生产者在平衡时获得正利润,这意味着专业化可以降低市场的竞争力。从概念上讲,我们对供应方竞争的分析迈向阐明个性化建议如何塑造数字商品市场,并了解多维竞争环境中出现的新现象。
Algorithmic recommender systems such as Spotify and Netflix affect not only consumer behavior but also producer incentives. Producers seek to create content that will be shown by the recommendation algorithm, which can impact both the diversity and quality of their content. In this work, we investigate the resulting supply-side equilibria in personalized content recommender systems. We model users and content as $D$-dimensional vectors, the recommendation algorithm as showing each user the content with highest dot product, and producers as maximizing the number of users who are recommended their content minus the cost of production. Two key features of our model are that the producer decision space is multi-dimensional and the user base is heterogeneous, which contrasts with classical low-dimensional models. Multi-dimensionality and heterogeneity create the potential for specialization, where different producers create different types of content at equilibrium. Using a duality argument, we derive necessary and sufficient conditions for whether specialization occurs: these conditions depend on the extent to which users are heterogeneous and to which producers can perform well on all dimensions at once without incurring a high cost. Then, we characterize the distribution of content at equilibrium in concrete settings with two populations of users. Lastly, we show that specialization can enable producers to achieve positive profit at equilibrium, which means that specialization can reduce the competitiveness of the marketplace. At a conceptual level, our analysis of supply-side competition takes a step towards elucidating how personalized recommendations shape the marketplace of digital goods, and towards understanding what new phenomena arise in multi-dimensional competitive settings.