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ScreenExplorer: Training a Vision-Language Model for Diverse Exploration in Open GUI World

Published 25 May 2025 in cs.AI | (2505.19095v1)

Abstract: The rapid progress of LLMs has sparked growing interest in building AGI within Graphical User Interface (GUI) environments. However, existing GUI agents based on LLMs or vision-LLMs (VLMs) often fail to generalize to novel environments and rely heavily on manually curated, diverse datasets. To overcome these limitations, we introduce ScreenExplorer, a VLM trained via Group Relative Policy Optimization(GRPO) in real, dynamic, and open-ended GUI environments. Innovatively, we introduced a world-model-based curiosity reward function to help the agent overcome the cold-start phase of exploration. Additionally, distilling experience streams further enhances the model's exploration capabilities. Our training framework enhances model exploration in open GUI environments, with trained models showing better environmental adaptation and sustained exploration compared to static deployment models. Our findings offer a scalable pathway toward AGI systems with self-improving capabilities in complex interactive settings.

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