Abstract

This article commences with a review of the fundamentals of reinforcement learning, encompassing a detailed overview of its key models and algorithms. It then juxtaposes these concepts with traditional machine learning paradigms, offering a comparative analysis. Subsequently, the focus shifts to the background and developmental landscape of recommendation systems. It systematically categorizes and describes the commonly employed recommendation algorithms. The core of the discussion centers on the utilization of reinforcement learning in recommendation systems. Beginning with practical case studies, the article delves into the strategies for integrating reinforcement learning with recommendation systems, addressing current challenges and envisaging future directions for development. Insightful reflections and comparisons between reinforcement learning and traditional machine learning are also provided, elucidating the differences and applicable scenarios for each approach. In essence, this article serves as an extensive guide to the intricacies of reinforcement learning and recommendation systems. It aims to equip readers with the knowledge required to understand and effectively apply these technologies. As technological advancement and research progress, it is anticipated that reinforcement learning will increasingly infiltrate the operations of recommendation systems, offering more personalized services and enhanced user experiences.

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