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Main Authors: Li, Xiaozhe, Lyu, Tianyi, Yang, Yizhao, Shan, Liang, Yang, Siyi, Zhang, Ligao, Huang, Zhuoyi, Liu, Qingwen, Li, Yang
Format: Preprint
Published: 2026
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Online Access:https://arxiv.org/abs/2604.11462
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author Li, Xiaozhe
Lyu, Tianyi
Yang, Yizhao
Shan, Liang
Yang, Siyi
Zhang, Ligao
Huang, Zhuoyi
Liu, Qingwen
Li, Yang
author_facet Li, Xiaozhe
Lyu, Tianyi
Yang, Yizhao
Shan, Liang
Yang, Siyi
Zhang, Ligao
Huang, Zhuoyi
Liu, Qingwen
Li, Yang
contents Large Language Models (LLMs) struggle with long-horizon tasks due to the "context bottleneck" and the "lost-in-the-middle" phenomenon, where accumulated noise from verbose environments degrades reasoning over multi-turn interactions. To address this issue, we introduce a symbiotic framework that decouples context management from task execution. Our architecture pairs a lightweight, specialized policy model, ContextCurator, with a powerful frozen foundation model, TaskExecutor. Trained via reinforcement learning, ContextCurator actively reduces information entropy in the working memory. It aggressively prunes environmental noise while preserving reasoning anchors, that is, sparse data points that are critical for future deductions. On WebArena, our framework improves the success rate of Gemini-3.0-flash from 36.4% to 41.2% while reducing token consumption by 8.8% (from 47.4K to 43.3K). On DeepSearch, it achieves a 57.1% success rate, compared with 53.9%, while reducing token consumption by a factor of 8. Remarkably, a 7B ContextCurator matches the context management performance of GPT-4o, providing a scalable and computationally efficient paradigm for autonomous long-horizon agents.
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id arxiv_https___arxiv_org_abs_2604_11462
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Escaping the Context Bottleneck: Active Context Curation for LLM Agents via Reinforcement Learning
Li, Xiaozhe
Lyu, Tianyi
Yang, Yizhao
Shan, Liang
Yang, Siyi
Zhang, Ligao
Huang, Zhuoyi
Liu, Qingwen
Li, Yang
Artificial Intelligence
Large Language Models (LLMs) struggle with long-horizon tasks due to the "context bottleneck" and the "lost-in-the-middle" phenomenon, where accumulated noise from verbose environments degrades reasoning over multi-turn interactions. To address this issue, we introduce a symbiotic framework that decouples context management from task execution. Our architecture pairs a lightweight, specialized policy model, ContextCurator, with a powerful frozen foundation model, TaskExecutor. Trained via reinforcement learning, ContextCurator actively reduces information entropy in the working memory. It aggressively prunes environmental noise while preserving reasoning anchors, that is, sparse data points that are critical for future deductions. On WebArena, our framework improves the success rate of Gemini-3.0-flash from 36.4% to 41.2% while reducing token consumption by 8.8% (from 47.4K to 43.3K). On DeepSearch, it achieves a 57.1% success rate, compared with 53.9%, while reducing token consumption by a factor of 8. Remarkably, a 7B ContextCurator matches the context management performance of GPT-4o, providing a scalable and computationally efficient paradigm for autonomous long-horizon agents.
title Escaping the Context Bottleneck: Active Context Curation for LLM Agents via Reinforcement Learning
topic Artificial Intelligence
url https://arxiv.org/abs/2604.11462