Unraveling the design space of immersive analytics: a systematic review

  author   = {Saffo, David and Bartolomeo, Sara Di and Crnovrsanin, Tarik and South, Laura and Raynor, Justin and Yildirim, Caglar and Dunne, Cody},
  journal  = {IEEE Transactions on Visualization and Computer Graphics},
  title    = {Unraveling the design space of immersive analytics: a systematic review},
  year     = {2023},
  note     = {VIS '23. Preprint at \url{https://osf.io/2e9x4/}. Supplemental material at \url{https://osf.io/5ewaj/}.},
  abstract = {Immersive analytics has emerged as a promising research area, leveraging advances in immersive display technologies and techniques, such as virtual and augmented reality, to facilitate data exploration and decision-making. This paper presents a systematic literature review of 73 studies published between 2013-2022 on immersive analytics systems and visualizations, aiming to identify and categorize the primary dimensions influencing their design. We identified five key dimensions: Academic Theory and Contribution, Immersive Technology, Data, Spatial Presentation, and Visual Presentation. Academic Theory and Contribution assess the motivations behind the works and their theoretical frameworks. Immersive Technology examines the display and input modalities, while Data dimension focuses on dataset types and generation. Spatial Presentation discusses the environment, space, embodiment, and collaboration aspects in IA, and Visual Presentation explores the visual elements, facet and position, and manipulation of views. By examining each dimension individually and cross-referencing them, this review uncovers trends and relationships that help inform the design of immersive systems visualizations. This analysis provides valuable insights for researchers and practitioners, offering guidance in designing future immersive analytics systems and shaping the trajectory of this rapidly evolving field. A free copy of this paper and all supplemental materials are available at osf.io/5ewaj.},
  series   = {VIS/TVCG},

Cody Dunne, Vis Lab — Northeastern University
West Village H, Room 302F
440 Huntington Ave, Boston, MA 02115, USA