IEEE VIS 2025 Content: Dashboard Vision: Using Eye-Tracking to Understand and Predict Dashboard Viewing Behaviors

Dashboard Vision: Using Eye-Tracking to Understand and Predict Dashboard Viewing Behaviors

Manling Yang -

Yihan Hou -

Ling Li -

Remco Chang -

Wei Zeng -

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Room: Hall M2

Keywords

Data visualization, Layout, Visualization, Data models, Solid modeling, Gaze tracking, Predictive models, Multitasking, Biological system modeling, Computational modeling

Abstract

Dashboards serve as effective visualization tools for conveying complex information. However, there exists a knowledge gap regarding how dashboard designs impact user engagement, necessitating designers to rely on their design expertise. Saliency has been used to comprehend viewing behaviors and assess visualizations, yet existing saliency models are primarily designed for single-view visualizations. To address this, we conduct an eye-tracking study to quantify participants’ viewing patterns on dashboards. We collect eye-movement data from 60 participants, each viewing 36 dashboards (16 representative dashboards shared across all and 20 unique to each participant), totaling 1,216 dashboards and 2,160 eye-movement data instances. Analysis of the data from 16 dashboards viewed by all participants provides insights into how dashboard objects and layout designs influence viewing behaviors. Our analysis confirms known viewing patterns and reveals new patterns related to dashboard layout designs. Using the eye-movement data and identified patterns, we develop a saliency model to predict viewing behaviors with dashboards. Compared to state-of-the-art models for single-view visualizations, our model demonstrates overall improvement in prediction performance for dashboards. Finally, we propose potential dashboard design guidelines, illustrate an application case, and discuss general scanning strategies along with limitations and future work.