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階層的生成エージェントによる逐次的人間行動シミュレーション
※ 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
- 災害時の人間行動をシミュレーションするため、高・中・低レベルの認知構造を持つ生成エージェントを開発した。
- 既存モデルの非現実的な仮定を克服し、LLMと認知モジュールを組み合わせた新しいシミュレーションフレームワークを提案する。
- 災害シミュレーションにおいて、ペルソナに基づいたLLMエージェントが逐次的な意思決定を行うことで、より現実的な避難行動を再現した。
Abstract
Complex cognitive, emotional, and social processes shape human evacuations during natural disasters. Accurate modeling and understanding of human behavior in disasters or emergencies can greatly impact the evacuation process by informing more effective planning and resource allocation. However, collecting human data in these situations is very difficult, and existing computational evacuation models assume rational, homogeneous behavior, leading to unrealistic, overly optimistic predictions. To address this gap, we present a simulation framework of sequential human decision-making during an evacuation scenario, introducing cognitively grounded, persona-driven agents. Our framework models evacuation behavior in a grid-based urban environment that evolves over time, capturing fire and other hazards. Human agents are modeled as personas that make sequential decisions in response to environmental stimuli with cognition structured in three levels: high-level evacuation goals, mid-level route reasoning, and low-level navigation. Decision-making is driven by large language models (LLMs) coupled with a cognitive module and calibrated with empirical human evacuation data. We propose a dynamic, stimulus-driven disaster simulation framework that models human evacuation decision-making using persona-conditioned LLM agents and a cognitive hierarchy.
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