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Hauptverfasser: Wei, Lei, Peng, Xiao, Dong, Xu, Xie, Niantao, Wang, Bin
Format: Preprint
Veröffentlicht: 2026
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Online-Zugang:https://arxiv.org/abs/2601.18642
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author Wei, Lei
Peng, Xiao
Dong, Xu
Xie, Niantao
Wang, Bin
author_facet Wei, Lei
Peng, Xiao
Dong, Xu
Xie, Niantao
Wang, Bin
contents Large language models deployed as autonomous agents face critical memory limitations, lacking selective forgetting mechanisms that lead to either catastrophic forgetting at context boundaries or information overload within them. While human memory naturally balances retention and forgetting through adaptive decay processes, current AI systems employ binary retention strategies that preserve everything or lose it entirely. We propose FadeMem, a biologically-inspired agent memory architecture that incorporates active forgetting mechanisms mirroring human cognitive efficiency. FadeMem implements differential decay rates across a dual-layer memory hierarchy, where retention is governed by adaptive exponential decay functions modulated by semantic relevance, access frequency, and temporal patterns. Through LLM-guided conflict resolution and intelligent memory fusion, our system consolidates related information while allowing irrelevant details to fade. Experiments on Multi-Session Chat, LoCoMo, and LTI-Bench demonstrate superior multi-hop reasoning and retrieval with 45\% storage reduction, validating the effectiveness of biologically-inspired forgetting in agent memory systems.
format Preprint
id arxiv_https___arxiv_org_abs_2601_18642
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle FadeMem: Biologically-Inspired Forgetting for Efficient Agent Memory
Wei, Lei
Peng, Xiao
Dong, Xu
Xie, Niantao
Wang, Bin
Artificial Intelligence
Computation and Language
Large language models deployed as autonomous agents face critical memory limitations, lacking selective forgetting mechanisms that lead to either catastrophic forgetting at context boundaries or information overload within them. While human memory naturally balances retention and forgetting through adaptive decay processes, current AI systems employ binary retention strategies that preserve everything or lose it entirely. We propose FadeMem, a biologically-inspired agent memory architecture that incorporates active forgetting mechanisms mirroring human cognitive efficiency. FadeMem implements differential decay rates across a dual-layer memory hierarchy, where retention is governed by adaptive exponential decay functions modulated by semantic relevance, access frequency, and temporal patterns. Through LLM-guided conflict resolution and intelligent memory fusion, our system consolidates related information while allowing irrelevant details to fade. Experiments on Multi-Session Chat, LoCoMo, and LTI-Bench demonstrate superior multi-hop reasoning and retrieval with 45\% storage reduction, validating the effectiveness of biologically-inspired forgetting in agent memory systems.
title FadeMem: Biologically-Inspired Forgetting for Efficient Agent Memory
topic Artificial Intelligence
Computation and Language
url https://arxiv.org/abs/2601.18642