English

GASim: A Graph-Accelerated Hybrid Framework for Social Simulation

Artificial Intelligence 2026-05-11 v1

Abstract

Large-scale social simulators are essential for studying complex social patterns. Prior work explores hybrid methods to scale up simulations, combining large language models (LLM)-based agents with numerical agent-based models (ABM). However, this incurs high latency due to expensive memory retrieval and sequential ABM execution. To address this challenge, we propose GASim, a graph-accelerated hybrid multi-agent framework for large-scale social simulations. For core agents driven by LLM, GASim introduces Graph-Optimized Memory (GOM) to replace intensive LLM-based retrieval pipelines with lightweight propagation over a sparse memory graph. For the majority of ordinary agents, GASim employs Graph Message Passing (GMP), substituting sequential ABM execution with parallel updates by fine-grained feature aggregation and Graph Attention Network. We further introduce Entropy-Driven Grouping (EDG) that coordinates this hybrid partitioning, leveraging information entropy to dynamically identify emergent core agents situated in information-diverse neighborhoods. Extensive experiments show that GASim not only delivers a substantial 9.94-fold end-to-end speedup over the traditional hybrid framework but also consumes less than 20% of baseline tokens, significantly reducing costs while preserving strong alignment with real-world public opinion trends. Our code is available at https://github.com/Jasmine0201/GASim.

Keywords

Cite

@article{arxiv.2605.07692,
  title  = {GASim: A Graph-Accelerated Hybrid Framework for Social Simulation},
  author = {Xuan Zhou and Yanhui Sun and Hantao Yao and Allen He and Yongdong Zhang and Wu Liu},
  journal= {arXiv preprint arXiv:2605.07692},
  year   = {2026}
}
R2 v1 2026-07-01T12:57:41.227Z