Modeling Recommender Ecosystems: Research Challenges at the Intersection of Mechanism Design, Reinforcement Learning and Generative Models
Craig Boutilier, Martin Mladenov, Guy Tennenholtz

TL;DR
This paper discusses the importance of modeling complex recommender ecosystems by integrating mechanism design, reinforcement learning, and generative models to optimize long-term utility and system health.
Contribution
It introduces a comprehensive framework combining multiple disciplines to address research challenges in modeling and optimizing recommender ecosystems.
Findings
Highlighting the need for long-term optimization using reinforcement learning
Emphasizing the role of mechanism design in managing incentives and strategic behavior
Proposing the use of generative models for interpretability and actionability
Abstract
Modern recommender systems lie at the heart of complex ecosystems that couple the behavior of users, content providers, advertisers, and other actors. Despite this, the focus of the majority of recommender research -- and most practical recommenders of any import -- is on the local, myopic optimization of the recommendations made to individual users. This comes at a significant cost to the long-term utility that recommenders could generate for its users. We argue that explicitly modeling the incentives and behaviors of all actors in the system -- and the interactions among them induced by the recommender's policy -- is strictly necessary if one is to maximize the value the system brings to these actors and improve overall ecosystem "health". Doing so requires: optimization over long horizons using techniques such as reinforcement learning; making inevitable tradeoffs in the utility that…
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Taxonomy
TopicsOpinion Dynamics and Social Influence
MethodsFocus
