Supply-Side Equilibria in Recommender Systems
Meena Jagadeesan, Nikhil Garg, Jacob Steinhardt

TL;DR
This paper models how multi-dimensional user preferences and producer strategies in recommender systems lead to specialization, affecting content diversity, producer profits, and marketplace competitiveness.
Contribution
It introduces a multi-dimensional model of supply-side equilibria in recommender systems, deriving conditions for specialization and analyzing its impact on profits and market dynamics.
Findings
Specialization depends on user heterogeneity and producer capabilities.
Equilibrium content distribution varies with user populations.
Specialization can enable positive profits for producers.
Abstract
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 -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…
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Taxonomy
TopicsConsumer Market Behavior and Pricing · Auction Theory and Applications · Game Theory and Applications
