TL;DR
This survey reviews 88 studies on ML4VIS, detailing how machine learning techniques are integrated into visualization processes to enhance design, development, and evaluation, and mapping these to ML tasks.
Contribution
It systematically categorizes ML applications in visualization into seven key processes, providing a structured understanding and future research directions in ML4VIS.
Findings
Seven main ML-assisted visualization processes identified.
Mapping ML tasks to visualization needs clarifies ML's role.
Survey highlights current practices and future opportunities.
Abstract
Inspired by the great success of machine learning (ML), researchers have applied ML techniques to visualizations to achieve a better design, development, and evaluation of visualizations. This branch of studies, known as ML4VIS, is gaining increasing research attention in recent years. To successfully adapt ML techniques for visualizations, a structured understanding of the integration of ML4VISis needed. In this paper, we systematically survey 88 ML4VIS studies, aiming to answer two motivating questions: "what visualization processes can be assisted by ML?" and "how ML techniques can be used to solve visualization problems?" This survey reveals seven main processes where the employment of ML techniques can benefit visualizations:Data Processing4VIS, Data-VIS Mapping, InsightCommunication, Style Imitation, VIS Interaction, VIS Reading, and User Profiling. The seven processes are related…
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