ExpSeek:网络智能体的自触发经验寻求机制 / ExpSeek: Self-Triggered Experience Seeking for Web Agents
1️⃣ 一句话总结
这篇论文提出了一种名为ExpSeek的新方法,让网络智能体在执行任务过程中能主动、适时地寻找并利用过往经验,而不是被动地一次性加载所有经验,从而显著提升了其在复杂网页环境中的表现。
Experience intervention in web agents emerges as a promising technical paradigm, enhancing agent interaction capabilities by providing valuable insights from accumulated experiences. However, existing methods predominantly inject experience passively as global context before task execution, struggling to adapt to dynamically changing contextual observations during agent-environment interaction. We propose ExpSeek, which shifts experience toward step-level proactive seeking: (1) estimating step-level entropy thresholds to determine intervention timing using the model's intrinsic signals; (2) designing step-level tailor-designed experience content. Experiments on Qwen3-8B and 32B models across four challenging web agent benchmarks demonstrate that ExpSeek achieves absolute improvements of 9.3% and 7.5%, respectively. Our experiments validate the feasibility and advantages of entropy as a self-triggering signal, reveal that even a 4B small-scale experience model can significantly boost the performance of larger agent models.
ExpSeek:网络智能体的自触发经验寻求机制 / ExpSeek: Self-Triggered Experience Seeking for Web Agents
这篇论文提出了一种名为ExpSeek的新方法,让网络智能体在执行任务过程中能主动、适时地寻找并利用过往经验,而不是被动地一次性加载所有经验,从而显著提升了其在复杂网页环境中的表现。
源自 arXiv: 2601.08605