Seeing Eye to AI? Applying Deep-Feature-Based Similarity Metrics to Information Visualization

Publication date

2025-04-26

Authors

Long, Sheng
Chatzimparmpas, Angelos
Alexander, Emma
Kay, Matthew
Hullman, Jessica

Editors

Advisors

Supervisors

Document Type

Part of book
Open Access logo

License

cc_by

Abstract

Judging the similarity of visualizations is crucial to various applications, such as visualization-based search and visualization recommendation systems. Recent studies show deep-feature-based similarity metrics correlate well with perceptual judgments of image similarity and serve as effective loss functions for tasks like image super-resolution and style transfer. We explore the application of such metrics to judgments of visualization similarity. We extend a similarity metric using five ML architectures and three pre-trained weight sets. We replicate results from previous crowdsourced studies on scatterplot and visual channel similarity perception. Notably, our metric using pre-trained ImageNet weights outperformed gradient-descent tuned MS-SSIM, a multi-scale similarity metric based on luminance, contrast, and structure. Our work contributes to understanding how deep-feature-based metrics can enhance similarity assessments in visualization, potentially improving visual analysis tools and techniques. Supplementary materials are available at https://osf.io/dj2ms/.

Keywords

deep-feature-based similarity metrics, evaluation, replication studies, similarity perception, Human-Computer Interaction, Computer Graphics and Computer-Aided Design, Software

Citation

Long, S, Chatzimparmpas, A, Alexander, E, Kay, M & Hullman, J 2025, Seeing Eye to AI? Applying Deep-Feature-Based Similarity Metrics to Information Visualization. in CHI 2025 - Proceedings of the 2025 CHI Conference on Human Factors in Computing Systems., 1171, Conference on Human Factors in Computing Systems - Proceedings, Association for Computing Machinery, 2025 CHI Conference on Human Factors in Computing Systems, CHI 2025, Yokohama, Japan, 26/04/25. https://doi.org/10.1145/3706598.3713955, conference