AIDB Daily Papers
トポロジー認識LLM駆動型社会シミュレーション:効率的で現実的なエージェントダイナミクスを実現する統一フレームワーク
※ 日本語タイトル・ポイントはAIによる自動生成です。正確な内容は原論文をご確認ください。
ポイント
- 構造的役割とネットワークトポロジーを考慮した新しい社会シミュレーションフレームワーク「TopoSim」を提案した。
- 既存手法の固定的な通信構造と均一な影響力モデルの限界を克服し、計算効率と現実性を向上させる。
- 実験により、シミュレーション忠実度を維持しつつトークン消費を大幅に削減し、現実世界の社会現象をより正確に再現することを示した。
Abstract
Social simulation is essential for understanding collective human behavior by modeling how individual interactions give rise to large-scale social dynamics. Recent advances in large language models (LLMs) have enabled multi-agent frameworks with human-like reasoning and communication capabilities. However, existing LLM-based simulations treat social networks as fixed communication scaffolds, failing to leverage the structural signals that shape behavioral convergence and heterogeneous influence in real-world systems, which often leads to inefficient and unrealistic dynamics. To address this challenge, we propose TopoSim, a unified topology-aware social simulation framework that explicitly integrates structural reasoning into agent interactions along two complementary dimensions. First, TopoSim aligns agents with similar structural roles and interaction contexts into shared backbone units, enabling coordinated updates that reduce redundant computation while preserving emergent social dynamics. Second, TopoSim models social influence as a structure-induced signal, introducing heterogeneous interaction patterns grounded in network topology rather than uniform influence assumptions. Extensive experiments across three social simulation frameworks and diverse datasets demonstrate that TopoSim achieves comparable or improved simulation fidelity while reducing token consumption by 50 - 90%. Moreover, our approach more accurately reproduces key structural phenomena observed in real-world social systems and exhibits strong generalization and scalability.
Paper AI Chat
この論文のPDF全文を対象にAIに質問できます。
質問の例: