Reflection-Based Memory For Web navigation Agents

Azam, Ruhana, Vempaty, Aditya, Jagmohan, Ashish

arXiv.org Artificial Intelligence 

Web navigation agents have made significant progress, yet current systems operate with no memory of past experiences -- leading to repeated mistakes and an inability to learn from previous interactions. We introduce Reflection-Augment Planning (ReAP), a web navigation system to leverage both successful and failed past experiences using self-reflections. Our method improves baseline results by 11 points overall and 29 points on previously failed tasks. These findings demonstrate that reflections can transfer to different web navigation tasks.

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