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arXiv 提交日期: 2026-01-08
📄 Abstract - Controllable Memory Usage: Balancing Anchoring and Innovation in Long-Term Human-Agent Interaction

As LLM-based agents are increasingly used in long-term interactions, cumulative memory is critical for enabling personalization and maintaining stylistic consistency. However, most existing systems adopt an ``all-or-nothing'' approach to memory usage: incorporating all relevant past information can lead to \textit{Memory Anchoring}, where the agent is trapped by past interactions, while excluding memory entirely results in under-utilization and the loss of important interaction history. We show that an agent's reliance on memory can be modeled as an explicit and user-controllable dimension. We first introduce a behavioral metric of memory dependence to quantify the influence of past interactions on current outputs. We then propose \textbf{Stee}rable \textbf{M}emory Agent, \texttt{SteeM}, a framework that allows users to dynamically regulate memory reliance, ranging from a fresh-start mode that promotes innovation to a high-fidelity mode that closely follows interaction history. Experiments across different scenarios demonstrate that our approach consistently outperforms conventional prompting and rigid memory masking strategies, yielding a more nuanced and effective control for personalized human-agent collaboration.

顶级标签: llm agents systems
详细标签: memory management long-term interaction personalization controllable ai human-agent collaboration 或 搜索:

可控内存使用:在长期人机交互中平衡记忆锚定与创新 / Controllable Memory Usage: Balancing Anchoring and Innovation in Long-Term Human-Agent Interaction


1️⃣ 一句话总结

这篇论文提出了一个名为SteeM的智能体框架,它允许用户像调节旋钮一样动态控制AI对过去交互记忆的依赖程度,从而在长期互动中灵活平衡遵循历史风格与激发新创意,避免了要么全记要么全忘的僵化策略。

源自 arXiv: 2601.05107