YuLan-OneSim: Towards the Next Generation of Social Simulator with Large Language Models
Lei Wang, Heyang Gao, Xiaohe Bo, Xu Chen, Ji-Rong Wen

TL;DR
YuLan-OneSim is an advanced social simulation platform utilizing large language models, enabling code-free scenario creation, large-scale agent simulation, and automated social research processes.
Contribution
It introduces a comprehensive, evolvable, and scalable social simulator with natural language scenario design and an integrated AI social researcher, advancing social simulation technology.
Findings
High-quality scenario generation verified
Reliable and scalable simulation performance demonstrated
Effective AI social researcher capabilities shown
Abstract
Leveraging large language model (LLM) based agents to simulate human social behaviors has recently gained significant attention. In this paper, we introduce a novel social simulator called YuLan-OneSim. Compared to previous works, YuLan-OneSim distinguishes itself in five key aspects: (1) Code-free scenario construction: Users can simply describe and refine their simulation scenarios through natural language interactions with our simulator. All simulation code is automatically generated, significantly reducing the need for programming expertise. (2) Comprehensive default scenarios: We implement 50 default simulation scenarios spanning 8 domains, including economics, sociology, politics, psychology, organization, demographics, law, and communication, broadening access for a diverse range of social researchers. (3) Evolvable simulation: Our simulator is capable of receiving external…
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Taxonomy
TopicsArtificial Intelligence in Law · Topic Modeling · Computational and Text Analysis Methods
