LGMay 16

SE-GA: Memory-Augmented Self-Evolution for GUI Agents

arXiv:2605.1688398.6Has Code
AI Analysis

This work addresses the problem of GUI agents failing at multi-step tasks due to limited context and static policies, offering a significant improvement in long-term planning and adaptability.

SE-GA introduces a memory-augmented self-evolution framework for GUI agents, achieving state-of-the-art success rates of 89.0% on ScreenSpot and 75.8% on AndroidControl-High, with strong generalization to dynamic environments.

Autonomous Graphical User Interface (GUI) agents often struggle with multi-step tasks due to constrained context windows and static policies that fail to adapt to dynamic environments. To address these limitations, this work proposes the Self-Evolving GUI Agent (SE-GA), a novel framework that integrates hierarchical memory structures with an iterative self-improvement mechanism. At the core of our approach is Test-Time Memory Extension (TTME), which facilitates long-term planning by dynamically retrieving episodic, semantic, and experiential memories to provide salient contexts during inference. To ensure continuous learning, we introduce Memory-Augmented Self-Evolution (MASE), which is a training pipeline that adopts the data collected by TTME to stabilize and enhance the agent's foundational policy. Extensive evaluations across both offline and online benchmarks demonstrate SE-GA achieves state-of-the-art performance, reaching success rates of 89.0\% on ScreenSpot and 75.8\% on the challenging AndroidControl-High dataset. Furthermore, significant improvements on the AndroidWorld benchmark highlight the superior generalization to dynamic environments. Open source code: https://github.com/jinshilong-dev/SE-GA

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