User Behavior Simulation with Large Language Model based Agents
- URL: http://arxiv.org/abs/2306.02552v3
- Date: Thu, 15 Feb 2024 11:34:29 GMT
- Title: User Behavior Simulation with Large Language Model based Agents
- Authors: Lei Wang, Jingsen Zhang, Hao Yang, Zhiyuan Chen, Jiakai Tang, Zeyu
Zhang, Xu Chen, Yankai Lin, Ruihua Song, Wayne Xin Zhao, Jun Xu, Zhicheng
Dou, Jun Wang, Ji-Rong Wen
- Abstract summary: We propose an LLM-based agent framework and design a sandbox environment to simulate real user behaviors.
Based on extensive experiments, we find that the simulated behaviors of our method are very close to the ones of real humans.
- Score: 116.74368915420065
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Simulating high quality user behavior data has always been a fundamental
problem in human-centered applications, where the major difficulty originates
from the intricate mechanism of human decision process. Recently, substantial
evidences have suggested that by learning huge amounts of web knowledge, large
language models (LLMs) can achieve human-like intelligence. We believe these
models can provide significant opportunities to more believable user behavior
simulation. To inspire such direction, we propose an LLM-based agent framework
and design a sandbox environment to simulate real user behaviors. Based on
extensive experiments, we find that the simulated behaviors of our method are
very close to the ones of real humans. Concerning potential applications, we
simulate and study two social phenomenons including (1) information cocoons and
(2) user conformity behaviors. This research provides novel simulation
paradigms for human-centered applications.
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