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LLM-Based Multi-Agent Systems are Scalable Graph Generative Models

LLM-Based Multi-Agent Systems are Scalable Graph Generative Models

来源:Arxiv_logoArxiv
英文摘要

The structural properties of naturally arising social graphs are extensively studied to understand their evolution. Prior approaches for modeling network dynamics typically rely on rule-based models, which lack realism and generalizability, or deep learning-based models, which require large-scale training datasets. Social graphs, as abstract graph representations of entity-wise interactions, present an opportunity to explore network evolution mechanisms through realistic simulations of human-item interactions. Leveraging the pre-trained social consensus knowledge embedded in large language models (LLMs), we present GraphAgent-Generator (GAG), a novel simulation-based framework for dynamic, text-attributed social graph generation. GAG simulates the temporal node and edge generation processes for zero-shot social graph generation. The resulting graphs exhibit adherence to seven key macroscopic network properties, achieving an 11% improvement in microscopic graph structure metrics. Through the node classification benchmarking task, we validate GAG effectively captures the intricate text-structure correlations in graph generation. Furthermore, GAG supports generating graphs with up to nearly 100,000 nodes or 10 million edges through large-scale LLM-based agent simulation with parallel acceleration, achieving a minimum speed-up of 90.4%. The source code is available at https://github.com/Ji-Cather/GraphAgent.

Zhewei Wei、Jialing Bi、Xuchen Pan、Xu Chen、Yaliang Li、Bolin Ding、Runlin Lei、Yankai Lin、Jiarui Ji

计算技术、计算机技术

Zhewei Wei,Jialing Bi,Xuchen Pan,Xu Chen,Yaliang Li,Bolin Ding,Runlin Lei,Yankai Lin,Jiarui Ji.LLM-Based Multi-Agent Systems are Scalable Graph Generative Models[EB/OL].(2024-10-13)[2025-08-02].https://arxiv.org/abs/2410.09824.点此复制

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