Saved in:
Bibliographic Details
Main Authors: Xu, Xiucheng, Xu, Bingbing, Tian, Xueyun, Huang, Zihe, Chen, Rongxin, Li, Yunfan, Shen, Huawei
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.14287
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1866908990570496000
author Xu, Xiucheng
Xu, Bingbing
Tian, Xueyun
Huang, Zihe
Chen, Rongxin
Li, Yunfan
Shen, Huawei
author_facet Xu, Xiucheng
Xu, Bingbing
Tian, Xueyun
Huang, Zihe
Chen, Rongxin
Li, Yunfan
Shen, Huawei
contents External memory systems are pivotal for enabling Large Language Model (LLM) agents to maintain persistent knowledge and perform long-horizon decision-making. Existing paradigms typically follow a two-stage process: computationally expensive memory construction (e.g., structuring data into graphs) followed by naive retrieval-augmented generation. However, our empirical analysis reveals two fundamental limitations: complex construction incurs high costs with marginal performance gains, and simple context concatenation fails to bridge the gap between retrieval recall and reasoning accuracy. To address these challenges, we propose CoM (Chain-of-Memory), a novel framework that advocates for a paradigm shift toward lightweight construction paired with sophisticated utilization. CoM introduces a Chain-of-Memory mechanism that organizes retrieved fragments into coherent inference paths through dynamic evolution, utilizing adaptive truncation to prune irrelevant noise. Extensive experiments on the LongMemEval and LoCoMo benchmarks demonstrate that CoM outperforms strong baselines with accuracy gains of 7.5%-10.4%, while drastically reducing computational overhead to approximately 2.7% of token consumption and 6.0% of latency compared to complex memory architectures.
format Preprint
id arxiv_https___arxiv_org_abs_2601_14287
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Chain-of-Memory: Lightweight Memory Construction with Dynamic Evolution for LLM Agents
Xu, Xiucheng
Xu, Bingbing
Tian, Xueyun
Huang, Zihe
Chen, Rongxin
Li, Yunfan
Shen, Huawei
Machine Learning
External memory systems are pivotal for enabling Large Language Model (LLM) agents to maintain persistent knowledge and perform long-horizon decision-making. Existing paradigms typically follow a two-stage process: computationally expensive memory construction (e.g., structuring data into graphs) followed by naive retrieval-augmented generation. However, our empirical analysis reveals two fundamental limitations: complex construction incurs high costs with marginal performance gains, and simple context concatenation fails to bridge the gap between retrieval recall and reasoning accuracy. To address these challenges, we propose CoM (Chain-of-Memory), a novel framework that advocates for a paradigm shift toward lightweight construction paired with sophisticated utilization. CoM introduces a Chain-of-Memory mechanism that organizes retrieved fragments into coherent inference paths through dynamic evolution, utilizing adaptive truncation to prune irrelevant noise. Extensive experiments on the LongMemEval and LoCoMo benchmarks demonstrate that CoM outperforms strong baselines with accuracy gains of 7.5%-10.4%, while drastically reducing computational overhead to approximately 2.7% of token consumption and 6.0% of latency compared to complex memory architectures.
title Chain-of-Memory: Lightweight Memory Construction with Dynamic Evolution for LLM Agents
topic Machine Learning
url https://arxiv.org/abs/2601.14287