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Main Authors: Tian, Shizuo, Weng, Xiaohong, Kong, Rui, Chen, Yuxuan, Liu, Guohong, Song, Yuebing, Liu, Jiacheng, Li, Yuchen, Yin, Dawei, Cao, Ting, Liu, Yunxin, Li, Yuanchun
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2606.01528
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author Tian, Shizuo
Weng, Xiaohong
Kong, Rui
Chen, Yuxuan
Liu, Guohong
Song, Yuebing
Liu, Jiacheng
Li, Yuchen
Yin, Dawei
Cao, Ting
Liu, Yunxin
Li, Yuanchun
author_facet Tian, Shizuo
Weng, Xiaohong
Kong, Rui
Chen, Yuxuan
Liu, Guohong
Song, Yuebing
Liu, Jiacheng
Li, Yuchen
Yin, Dawei
Cao, Ting
Liu, Yunxin
Li, Yuanchun
contents In open-ended environments, exploration is fundamental for autonomous agents, yet current language model agents struggle with this. Effective exploration requires memory, but retaining raw interaction histories is computationally expensive over long trajectories. While latent memory offers a solution to compress interaction histories, its training lacks reliable supervisory signals. We introduce \textbf{J}oint \textbf{A}gent \textbf{M}emory and \textbf{E}xploration \textbf{L}earning (\textbf{JAMEL}), a framework that trains agentic memory and exploration policy together through novelty-driven interaction. We observe that memory and exploration form a mutually dependent loop: sustained exploration requires memory to distinguish exhausted behaviors from unseen ones, while novelty-seeking interaction provides the supervision needed to make memory useful for future exploration. By utilizing deterministic and persistent novelty signals such as code coverage in the GUI domain, we provide natural, annotation-free supervision for the memory module. Empirical evaluations demonstrate that \ours successfully generalizes to unseen environments. Its exploration capability outperforms open-weight baselines and rivals the exploration depth of a closed-source model while reducing token consumption. Our code and model are open-sourced at https://github.com/MobileLLM/JAMEL.
format Preprint
id arxiv_https___arxiv_org_abs_2606_01528
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Joint Agent Memory and Exploration Learning via Novelty Signals
Tian, Shizuo
Weng, Xiaohong
Kong, Rui
Chen, Yuxuan
Liu, Guohong
Song, Yuebing
Liu, Jiacheng
Li, Yuchen
Yin, Dawei
Cao, Ting
Liu, Yunxin
Li, Yuanchun
Artificial Intelligence
In open-ended environments, exploration is fundamental for autonomous agents, yet current language model agents struggle with this. Effective exploration requires memory, but retaining raw interaction histories is computationally expensive over long trajectories. While latent memory offers a solution to compress interaction histories, its training lacks reliable supervisory signals. We introduce \textbf{J}oint \textbf{A}gent \textbf{M}emory and \textbf{E}xploration \textbf{L}earning (\textbf{JAMEL}), a framework that trains agentic memory and exploration policy together through novelty-driven interaction. We observe that memory and exploration form a mutually dependent loop: sustained exploration requires memory to distinguish exhausted behaviors from unseen ones, while novelty-seeking interaction provides the supervision needed to make memory useful for future exploration. By utilizing deterministic and persistent novelty signals such as code coverage in the GUI domain, we provide natural, annotation-free supervision for the memory module. Empirical evaluations demonstrate that \ours successfully generalizes to unseen environments. Its exploration capability outperforms open-weight baselines and rivals the exploration depth of a closed-source model while reducing token consumption. Our code and model are open-sourced at https://github.com/MobileLLM/JAMEL.
title Joint Agent Memory and Exploration Learning via Novelty Signals
topic Artificial Intelligence
url https://arxiv.org/abs/2606.01528