结构化情景事件记忆 / Structured Episodic Event Memory
1️⃣ 一句话总结
这篇论文提出了一种名为SEEM的新型记忆框架,它通过结合图记忆和动态情景记忆层,并引入关联融合与反向溯源机制,有效解决了大语言模型在处理复杂、长程交互时记忆碎片化和逻辑不一致的问题,从而显著提升了智能体在叙事连贯性和推理一致性上的表现。
Current approaches to memory in Large Language Models (LLMs) predominantly rely on static Retrieval-Augmented Generation (RAG), which often results in scattered retrieval and fails to capture the structural dependencies required for complex reasoning. For autonomous agents, these passive and flat architectures lack the cognitive organization necessary to model the dynamic and associative nature of long-term interaction. To address this, we propose Structured Episodic Event Memory (SEEM), a hierarchical framework that synergizes a graph memory layer for relational facts with a dynamic episodic memory layer for narrative progression. Grounded in cognitive frame theory, SEEM transforms interaction streams into structured Episodic Event Frames (EEFs) anchored by precise provenance pointers. Furthermore, we introduce an agentic associative fusion and Reverse Provenance Expansion (RPE) mechanism to reconstruct coherent narrative contexts from fragmented evidence. Experimental results on the LoCoMo and LongMemEval benchmarks demonstrate that SEEM significantly outperforms baselines, enabling agents to maintain superior narrative coherence and logical consistency.
结构化情景事件记忆 / Structured Episodic Event Memory
这篇论文提出了一种名为SEEM的新型记忆框架,它通过结合图记忆和动态情景记忆层,并引入关联融合与反向溯源机制,有效解决了大语言模型在处理复杂、长程交互时记忆碎片化和逻辑不一致的问题,从而显著提升了智能体在叙事连贯性和推理一致性上的表现。
源自 arXiv: 2601.06411