Contrastive State Augmentations for Reinforcement Learning-Based Recommender Systems
Zhaochun Ren, Na Huang, Yidan Wang, Pengjie Ren, Jun Ma, Jiahuan Lei, Xinlei Shi, Hengliang Luo, Joemon M. Jose, Xin Xin
Abstract
Learning reinforcement learning (RL)-based recommenders from historical user-item interaction sequences is vital to generate high-reward recommendations and improve long-term cumulative benefits. However, existing RL recommendation methods encounter difficulties (i) to estimate the value functions for states which are not contained in the offline training data, and (ii) to learn effective state representations from user implicit feedback due to the lack of contrastive signals.
Topics & Concepts
Reinforcement learningRecommender systemComputer scienceState (computer science)Artificial intelligenceTerm (time)ReinforcementValue (mathematics)Machine learningHuman–computer interactionEngineeringPhysicsStructural engineeringAlgorithmQuantum mechanicsRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchSmart Grid Energy Management