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EvoSpark:統一された長期ナラティブ進化のための内生的インタラクティブエージェント社会
※ 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
- LLM基盤のマルチエージェントシステムで、首尾一貫した長期的な物語の進化を実現するフレームワークEvoSparkを提案。
- 生成過程における偶発性から生じる矛盾を、動的な役割進化と空間的整合性によって解消し、物語の破綻を防ぐ点が新しい。
- EvoSparkは、多様な設定で既存手法を凌駕し、表現豊かで一貫性のある物語体験の持続的な生成を可能にした。
Abstract
Realizing endogenous narrative evolution in LLM-based multi-agent systems is hindered by the inherent stochasticity of generative emergence. In particular, long-horizon simulations suffer from social memory stacking, where conflicting relational states accumulate without resolution, and narrative-spatial dissonance, where spatial logic detaches from the evolving plot. To bridge this gap, we propose EvoSpark, a framework specifically designed to sustain logically coherent long-horizon narratives within Endogenous Interactive Agent Societies. To ensure consistency, the Stratified Narrative Memory employs a Role Socio-Evolutionary Base as living cognition, dynamically metabolizing experiences to resolve historical conflicts. Complementarily, Generative Mise-en-Scène mechanism enforces Role-Location-Plot alignment, synchronizing character presence with the narrative flow. Underpinning these is the Unified Narrative Operation Engine, which integrates an Emergent Character Grounding Protocol to transform stochastic sparking into persistent characters. This engine establishes a substrate that expands a minimal premise into an open-ended, evolving story world. Experiments demonstrate that EvoSpark significantly outperforms baselines across diverse paradigms, enabling the sustained generation of expressive and coherent narrative experiences.
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