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SGMEM: SENTENCE GRAPH MEMORY FOR LONG-TERM CONVERSATIONAL AGENTS

Computer Science

SGMEM: SENTENCE GRAPH MEMORY FOR LONG-TERM CONVERSATIONAL AGENTS

Y. Wu, Y. Zhang, et al.

SGMem (Sentence Graph Memory) represents dialogue as sentence-level graphs within chunked units, combining retrieved raw dialogue with generated memory like summaries, facts, and insights to supply LLMs with coherent, relevant context. Experiments on LongMemEval and LoCoMo show SGMem improves accuracy and outperforms strong baselines. Research conducted by Yaxiong Wu, Yongyue Zhang, Sheng Liang, and Yong Liu.... show more
Abstract
Long-term conversational agents require effective memory management to handle dialogue histories that exceed the context window of large language models (LLMs). Existing methods based on fact extraction or summarization reduce redundancy but struggle to organize and retrieve relevant information across different granularities of dialogue and generated memory. We introduce SGMem (Sentence Graph Memory), which represents dialogue as sentence-level graphs within chunked units, capturing associations across turn-, round-, and session-level contexts. By combining retrieved raw dialogue with generated memory such as summaries, facts and insights, SGMem supplies LLMs with coherent and relevant context for response generation. Experiments on LongMemEval and LoCoMo show that SGMem consistently improves accuracy and outperforms strong baselines in long-term conversational question answering.
Publisher
Published On
Sep 25, 2025
Authors
Yaxiong Wu, Yongyue Zhang, Sheng Liang, Yong Liu
Tags
Sentence Graph Memory
SGMem
long-term conversational agents
memory management
sentence-level graphs
context retrieval
long-term conversational QA
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