AI4VIS: Survey on Artificial Intelligence Approaches for Data Visualization (2102.01330v2)
Abstract: Visualizations themselves have become a data format. Akin to other data formats such as text and images, visualizations are increasingly created, stored, shared, and (re-)used with AI techniques. In this survey, we probe the underlying vision of formalizing visualizations as an emerging data format and review the recent advance in applying AI techniques to visualization data (AI4VIS). We define visualization data as the digital representations of visualizations in computers and focus on data visualization (e.g., charts and infographics). We build our survey upon a corpus spanning ten different fields in computer science with an eye toward identifying important common interests. Our resulting taxonomy is organized around WHAT is visualization data and its representation, WHY and HOW to apply AI to visualization data. We highlight a set of common tasks that researchers apply to the visualization data and present a detailed discussion of AI approaches developed to accomplish those tasks. Drawing upon our literature review, we discuss several important research questions surrounding the management and exploitation of visualization data, as well as the role of AI in support of those processes. We make the list of surveyed papers and related material available online at ai4vis.github.io.
- Aoyu Wu (21 papers)
- Yun Wang (229 papers)
- Xinhuan Shu (12 papers)
- Dominik Moritz (36 papers)
- Weiwei Cui (53 papers)
- Haidong Zhang (29 papers)
- Dongmei Zhang (193 papers)
- Huamin Qu (141 papers)