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Main Authors: Zhu, Jinchang, Li, Jindong, Zhang, Cheng, Liu, Jiahong, Yang, Menglin
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.16839
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author Zhu, Jinchang
Li, Jindong
Zhang, Cheng
Liu, Jiahong
Yang, Menglin
author_facet Zhu, Jinchang
Li, Jindong
Zhang, Cheng
Liu, Jiahong
Yang, Menglin
contents Long-term memory is a critical challenge for Large Language Model agents, as fixed context windows cannot preserve coherence across extended interactions. Existing memory systems represent conversation history as unstructured embedding vectors, retrieving information through semantic similarity. This paradigm fails to capture the associative structure of human memory, wherein related experiences progressively strengthen interconnections through repeated co-activation. Inspired by cognitive neuroscience, we identify three mechanisms central to biological memory: association, consolidation, and spreading activation, which remain largely absent in current research. To bridge this gap, we propose HeLa-Mem, a bio-inspired memory architecture that models memory as a dynamic graph with Hebbian learning dynamics. HeLa-Mem employs a dual-level organization: (1) an episodic memory graph that evolves through co-activation patterns, and (2) a semantic memory store populated via Hebbian Distillation, wherein a Reflective Agent identifies densely connected memory hubs and distills them into structured, reusable semantic knowledge. This dual-path design leverages both semantic similarity and learned associations, mirroring the episodic-semantic distinction in human cognition. Experiments on LoCoMo demonstrate superior performance across four question categories while using significantly fewer context tokens. Code is available on GitHub: https://github.com/ReinerBRO/HeLa-Mem
format Preprint
id arxiv_https___arxiv_org_abs_2604_16839
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle HeLa-Mem: Hebbian Learning and Associative Memory for LLM Agents
Zhu, Jinchang
Li, Jindong
Zhang, Cheng
Liu, Jiahong
Yang, Menglin
Computation and Language
Long-term memory is a critical challenge for Large Language Model agents, as fixed context windows cannot preserve coherence across extended interactions. Existing memory systems represent conversation history as unstructured embedding vectors, retrieving information through semantic similarity. This paradigm fails to capture the associative structure of human memory, wherein related experiences progressively strengthen interconnections through repeated co-activation. Inspired by cognitive neuroscience, we identify three mechanisms central to biological memory: association, consolidation, and spreading activation, which remain largely absent in current research. To bridge this gap, we propose HeLa-Mem, a bio-inspired memory architecture that models memory as a dynamic graph with Hebbian learning dynamics. HeLa-Mem employs a dual-level organization: (1) an episodic memory graph that evolves through co-activation patterns, and (2) a semantic memory store populated via Hebbian Distillation, wherein a Reflective Agent identifies densely connected memory hubs and distills them into structured, reusable semantic knowledge. This dual-path design leverages both semantic similarity and learned associations, mirroring the episodic-semantic distinction in human cognition. Experiments on LoCoMo demonstrate superior performance across four question categories while using significantly fewer context tokens. Code is available on GitHub: https://github.com/ReinerBRO/HeLa-Mem
title HeLa-Mem: Hebbian Learning and Associative Memory for LLM Agents
topic Computation and Language
url https://arxiv.org/abs/2604.16839