When Large Language Model based Agent Meets User Behavior Analysis: A Novel User Simulation Paradigm

计算机科学 人机交互 仿形(计算机编程) 推荐系统 用户建模 领域(数学) 动作(物理) 人工智能 用户界面 机器学习 程序设计语言 物理 数学 量子力学 纯数学
作者
Lei Wang,Jingsen Zhang,Xu Chen,Yankai Lin,Ruihua Song,Wayne Xin Zhao,Ji-Rong Wen
出处
期刊:Cornell University - arXiv [Cornell University]
被引量:4
标识
DOI:10.48550/arxiv.2306.02552
摘要

User behavior analysis is crucial in human-centered AI applications. In this field, the collection of sufficient and high-quality user behavior data has always been a fundamental yet challenging problem. An intuitive idea to address this problem is automatically simulating the user behaviors. However, due to the subjective and complex nature of human cognitive processes, reliably simulating the user behavior is difficult. Recently, large language models (LLM) have obtained remarkable successes, showing great potential to achieve human-like intelligence. We argue that these models present significant opportunities for reliable user simulation, and have the potential to revolutionize traditional study paradigms in user behavior analysis. In this paper, we take recommender system as an example to explore the potential of using LLM for user simulation. Specifically, we regard each user as an LLM-based autonomous agent, and let different agents freely communicate, behave and evolve in a virtual simulator called RecAgent. For comprehensively simulation, we not only consider the behaviors within the recommender system (\emph{e.g.}, item browsing and clicking), but also accounts for external influential factors, such as, friend chatting and social advertisement. Our simulator contains at most 1000 agents, and each agent is composed of a profiling module, a memory module and an action module, enabling it to behave consistently, reasonably and reliably. In addition, to more flexibly operate our simulator, we also design two global functions including real-human playing and system intervention. To evaluate the effectiveness of our simulator, we conduct extensive experiments from both agent and system perspectives. In order to advance this direction, we have released our project at {https://github.com/RUC-GSAI/YuLan-Rec}.
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