By Xi Zhu, Rutgers University, USA | Yu Wang, Netflix, USA | Hang Gao, Rutgers University, USA | Wujiang Xu, Rutgers University, USA | Chen Wang, University of Illinois Chicago, USA | Zhiwei Liu, Salesforce AI Research, USA | Kun Wang, Squirrel Ai Learning, USA | Mingyu Jin, Rutgers University, USA | Linsey Pang, Salesforce, USA | Qingsong Weng, Squirrel Ai Learning, USA | Philip S. Yu, University of Illinois Chicago, USA | Yongfeng Zhang, Rutgers University, USA
In recent years, the integration of Large Language Models (LLMs) and Recommender Systems (RS) has revolutionized the way personalized and intelligent user experiences are delivered. This survey provides an extensive review of critical challenges, current landscape, and future directions in the collaboration between LLM-based AI agents (LLM Agent) and recommender systems. We begin with an introduction to the foundational knowledge, exploring the components of LLM agents and the applications of LLMs in recommender systems. The survey then delves into the symbiotic relationship between LLM agents and recommender systems, illustrating how LLM agents enhance recommender systems and how recommender systems support better LLM agents. Specifically, we discuss the overall architectures for designing LLM agents for recommendation, encompassing profile, memory, planning, and action components, along with multi-agent collaboration. Conversely, we investigate how recommender systems contribute to LLM agents, focusing on areas such as memory recommendation, plan recommendation, tool recommendation, agent recommendation, and personalized LLMs and LLM agents. Furthermore, a critical evaluation of trustworthy AI agents and recommender systems follows, addressing key issues of safety, explainability, fairness, and privacy. Finally, we propose potential future research directions, highlighting emerging trends and opportunities in the intersection of AI agents and recommender systems. This survey concludes by summarizing the key insights of current research and outlining promising avenues for future exploration in this rapidly evolving field. A curated collection of relevant papers for this survey is available in the GitHub repository: https://github.com/agiresearch/AgentRecSys.
The integration of Large Language Models (LLM) and Recommender Systems (RS) has marked a transformative shift in how personalized recommendations are generated and delivered. Recommender systems, designed to predict user preferences and suggest relevant items, are ubiquitous in applications ranging from e-commerce to entertainment and social media. Historically, these systems have relied on techniques such as collaborative filtering, content-based filtering, and hybrid approaches. However, the advent of LLMs and AI agents has introduced new paradigms, significantly enhancing the capabilities and performance of recommender systems.
This monograph provides an extensive review of critical challenges, the current landscape, and future directions in the collaboration between LLM-based AI agents (LLM Agent) and recommender systems. The monograph begins with an introduction to the foundational knowledge, exploring the components of LLM agents and the applications of LLMs in recommender systems. It then delves into the symbiotic relationship between LLM agents and recommender systems, illustrating how LLM agents enhance recommender systems and how recommender systems support better LLM agents. Specifically, the overall architectures for designing LLM agents for recommendation are discussed, encompassing profile, memory, planning, and action components, along with multi-agent collaboration. Conversely, it investigates how recommender systems contribute to LLM agents, focusing on areas such as memory recommendation, plan recommendation, tool recommendation, agent recommendation, and personalized LLMs and LLM agents.
Furthermore, a critical evaluation is made of trustworthy AI agents and recommender systems, addressing key issues of safety, explainability, fairness, and privacy. Finally, potential future research directions are proposed, highlighting emerging trends and opportunities in the intersection of AI agents and recommender systems. This monograph concludes by summarizing the key insights of current research and outlining promising avenues for future exploration in this rapidly evolving field.