A Design Space for Surfacing Content Recommendations in Visual Analytic Platforms (2208.04219v1)
Abstract: Recommendation algorithms have been leveraged in various ways within visualization systems to assist users as they perform of a range of information tasks. One common focus for these techniques has been the recommendation of content, rather than visual form, as a means to assist users in the identification of information that is relevant to their task context. A wide variety of techniques have been proposed to address this general problem, with a range of design choices in how these solutions surface relevant information to users. This paper reviews the state-of-the-art in how visualization systems surface recommended content to users during users' visual analysis; introduces a four-dimensional design space for visual content recommendation based on a characterization of prior work; and discusses key observations regarding common patterns and future research opportunities.
- Zhilan Zhou (3 papers)
- Wenyuan Wang (50 papers)
- Mengtian Guo (6 papers)
- Yue Wang (675 papers)
- David Gotz (21 papers)