MemoBrain:作为推理代理大脑的执行记忆 / MemoBrain: Executive Memory as an Agentic Brain for Reasoning
1️⃣ 一句话总结
这篇论文提出了一个名为MemoBrain的执行记忆模型,它通过主动管理推理过程中的中间状态和逻辑关系,帮助使用工具的AI代理在复杂长程任务中保持逻辑连贯性,从而提升其推理能力。
Complex reasoning in tool-augmented agent frameworks is inherently long-horizon, causing reasoning traces and transient tool artifacts to accumulate and strain the bounded working context of large language models. Without explicit memory mechanisms, such accumulation disrupts logical continuity and undermines task alignment. This positions memory not as an auxiliary efficiency concern, but as a core component for sustaining coherent, goal-directed reasoning over long horizons. We propose MemoBrain, an executive memory model for tool-augmented agents that constructs a dependency-aware memory over reasoning steps, capturing salient intermediate states and their logical relations. Operating as a co-pilot alongside the reasoning agent, MemoBrain organizes reasoning progress without blocking execution and actively manages the working context. Specifically, it prunes invalid steps, folds completed sub-trajectories, and preserves a compact, high-salience reasoning backbone under a fixed context budget. Together, these mechanisms enable explicit cognitive control over reasoning trajectories rather than passive context accumulation. We evaluate MemoBrain on challenging long-horizon benchmarks, including GAIA, WebWalker, and BrowseComp-Plus, demonstrating consistent improvements over strong baselines.
MemoBrain:作为推理代理大脑的执行记忆 / MemoBrain: Executive Memory as an Agentic Brain for Reasoning
这篇论文提出了一个名为MemoBrain的执行记忆模型,它通过主动管理推理过程中的中间状态和逻辑关系,帮助使用工具的AI代理在复杂长程任务中保持逻辑连贯性,从而提升其推理能力。
源自 arXiv: 2601.08079