AI RESEARCH

Enhancing Web Agents with a Hierarchical Memory Tree

arXiv CS.AI

ArXi:2603.07024v1 Announce Type: new Large language model-based web agents have shown strong potential in automating web interactions through advanced reasoning and instruction following. While retrieval-based memory derived from historical trajectories enables these agents to handle complex, long-horizon tasks, current methods struggle to generalize across unseen websites. We identify that this challenge arises from the flat memory structures that entangle high-level task logic with site-specific action details.