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Predicting and Explaining Mobile UI Tappability with Vision Modeling and Saliency Analysis

Eldon Schoop, Xin Zhou, Gang Li, Zhourong Chen, Bjoern Hartmann, Yang Li

2022CHI Conference on Human Factors in Computing Systems28 citationsDOIOpen Access PDF

Abstract

UI designers often correct false affordances and improve the discoverability of features when users have trouble determining if elements are tappable. We contribute a novel system that models the perceived tappability of mobile UI elements with a vision-based deep neural network and helps provide design insights with dataset-level and instance-level explanations of model predictions. Our system retrieves designs from similar mobile UI examples from our dataset using the latent space of our model. We also contribute a novel use of an interpretability algorithm, XRAI, to generate a heatmap of UI elements that contribute to a given tappability prediction. Through several examples, we show how our system can help automate elements of UI usability analysis and provide insights for designers to iterate their designs. In addition, we share findings from an exploratory evaluation with professional designers to learn how AI-based tools can aid UI design and evaluation for tappability issues.

Topics & Concepts

InterpretabilityComputer scienceDiscoverabilityAffordanceUsabilityHuman–computer interactionArtificial intelligenceExploratory analysisMachine learningMobile deviceData scienceWorld Wide WebSoftware Engineering ResearchData Visualization and AnalyticsExplainable Artificial Intelligence (XAI)
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