Section 01
Panoramic Guide to Multi-Agent Video Recommendation Systems (MAVRS): From MARL to LLM Architectural Evolution and Challenges
Multi-Agent Video Recommendation Systems (MAVRS) are a new paradigm to address the limitations of traditional single-model recommendation systems. The core is to decompose the recommendation task into multiple specialized agents for collaborative completion. This article reviews its evolution: from early Multi-Agent Reinforcement Learning (MARL)-based systems to today's Large Language Model (LLM)-driven architectures; analyzes agent collaboration modes, and points out open challenges such as scalability and multimodal understanding, demonstrating its potential to develop towards more intelligent, interpretable, and personalized directions.