Generative Slate Recommendation with Reinforcement Learning
Romain Deffayet, Thibaut Thonet, Jean-Michel Renders, Maarten de Rijke
Abstract
Recent research has employed reinforcement learning (RL) algorithms to optimize long-term user engagement in recommender systems, thereby avoiding common pitfalls such as user boredom and filter bubbles. They capture the sequential and interactive nature of recommendations, and thus offer a principled way to deal with long-term rewards and avoid myopic behaviors. However, RL approaches are intractable in the slate recommendation scenario - where a list of items is recommended at each interaction turn - due to the combinatorial action space. In that setting, an action corresponds to a slate that may contain any combination of items.
Topics & Concepts
Reinforcement learningComputer scienceGenerative grammarArtificial intelligenceReinforcementMachine learningEngineeringStructural engineeringRecommender Systems and TechniquesVideo Analysis and SummarizationConsumer Market Behavior and Pricing