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arXiv 提交日期: 2026-01-29
📄 Abstract - DynaWeb: Model-Based Reinforcement Learning of Web Agents

The development of autonomous web agents, powered by Large Language Models (LLMs) and reinforcement learning (RL), represents a significant step towards general-purpose AI assistants. However, training these agents is severely hampered by the challenges of interacting with the live internet, which is inefficient, costly, and fraught with risks. Model-based reinforcement learning (MBRL) offers a promising solution by learning a world model of the environment to enable simulated interaction. This paper introduces DynaWeb, a novel MBRL framework that trains web agents through interacting with a web world model trained to predict naturalistic web page representations given agent actions. This model serves as a synthetic web environment where an agent policy can dream by generating vast quantities of rollout action trajectories for efficient online reinforcement learning. Beyond free policy rollouts, DynaWeb incorporates real expert trajectories from training data, which are randomly interleaved with on-policy rollouts during training to improve stability and sample efficiency. Experiments conducted on the challenging WebArena and WebVoyager benchmarks demonstrate that DynaWeb consistently and significantly improves the performance of state-of-the-art open-source web agent models. Our findings establish the viability of training web agents through imagination, offering a scalable and efficient way to scale up online agentic RL.

顶级标签: agents reinforcement learning llm
详细标签: model-based rl web agents world model sample efficiency synthetic environment 或 搜索:

DynaWeb:基于模型的网络智能体强化学习框架 / DynaWeb: Model-Based Reinforcement Learning of Web Agents


1️⃣ 一句话总结

这篇论文提出了一个名为DynaWeb的新框架,它通过训练一个能模拟真实网页交互的‘世界模型’,让网络智能体能在虚拟环境中高效、安全地进行强化学习训练,从而显著提升了智能体在真实网络任务上的表现。

源自 arXiv: 2601.22149