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RL4RS: A Real-World Dataset for Reinforcement Learning based Recommender System

Kai Wang, Zhene Zou, Minghao Zhao, Qilin Deng, 悦雄 水上, Yile Liang, Runze Wu, Xudong Shen, Tangjie Lyu, Changjie Fan

202315 citationsDOI

Abstract

Reinforcement learning based recommender systems (RL-based RS) aim at learning a good policy from a batch of collected data, by casting recommendations to multi-step decision-making tasks. However, current RL-based RS research commonly has a large reality gap. In this paper, we introduce the first open-source real-world dataset, RL4RS, hoping to replace the artificial datasets and semi-simulated RS datasets previous studies used due to the resource limitation of the RL-based RS domain. Unlike academic RL research, RL-based RS suffers from the difficulties of being well-validated before deployment. We attempt to propose a new systematic evaluation framework, including evaluation of environment simulation, evaluation on environments, and counterfactual policy evaluation. In summary, the RL4RS (Reinforcement Learning for Recommender Systems), a new resource with special concerns on the reality gaps, contains two real-world datasets, data understanding tools, tuned simulation environments, related advanced RL baselines, batch RL baselines, and counterfactual policy evaluation algorithms. The RL4RS suite can be found at https://github.com/fuxiAIlab/RL4RS.

Topics & Concepts

Reinforcement learningCounterfactual thinkingComputer scienceRecommender systemSuiteSoftware deploymentResource (disambiguation)Machine learningArtificial intelligenceDomain (mathematical analysis)Software engineeringArchaeologyPhilosophyComputer networkHistoryEpistemologyMathematicsMathematical analysisRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchSmart Grid Energy Management