CLAIApr 28

Training Computer Use Agents to Assess the Usability of Graphical User Interfaces

arXiv:2604.2602093.0
Predicted impact top 25% in CL · last 90 daysOriginality Incremental advance
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This work addresses the costly and time-intensive process of usability testing for HCI practitioners by providing a data-driven, automated assessment tool.

The authors present a novel method to train computer use agents for automated GUI usability assessment, achieving superior accuracy over larger models in predicting usability scores and generating realistic critiques.

Usability testing with experts and potential users can assess the effectiveness, efficiency, and user satisfaction of graphical user interfaces (GUIs) but doing so remains a costly and time-intensive process. Prior work has used computer use agents (CUAs) and other generative agents that can simulate user interactions and preference, but we show that agents still struggle to provide accurate usability assessments. In this work, we present a novel machine learning method that operationalizes a computational definition of usability to train CUAs to assess GUI usability by i) prioritizing important interaction flows, ii) executing them through human-like interactions, and iii) predicting a learned numerical usability score. We train a computer use agent, uxCUA, with our algorithm on a large-scale dataset of fully interactive user interfaces (UIs) paired with usability labels and human preferences. We show that uxCUA outperforms larger models in accurate usability assessments and produces realistic critiques of both synthetic and real UIs. More broadly, our work aims to build a principled, data-driven foundation for automated usability assessment in HCI.

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