Science map metaphors: a comparison of network versus hexmap-based visualizations
Katy Börner (),
Adam H. Simpson,
Andreas Bueckle and
Robert L. Goldstone
Additional contact information
Katy Börner: Indiana University
Adam H. Simpson: Indiana University
Andreas Bueckle: Indiana University
Robert L. Goldstone: Indiana University
Scientometrics, 2018, vol. 114, issue 2, No 5, 409-426
Abstract:
Abstract Most maps of science use a network layout; few use a landscape metaphor. Human users are trained in reading geospatial maps, yet most have a hard time reading even simple networks. Prior work using general networks has shown that map-based visualizations increase recall accuracy of data. This paper reports the result of a comparison of two comparable renderings of the UCSD map of science that are: the original network layout and a novel hexmap that uses a landscape metaphor to layout the 554 subdisciplines grouped into 13 color-coded disciplines of science. Overlaid are HITS metrics that show the impact and transformativeness of different scientific subdisciplines. Both maps support the same interactivity, including search, filter, zoom, panning, and details on demand. Users performed memorization, search, and retrieval tasks using both maps. Results did not show any significant differences in how the two maps were remembered or used by participants. We conclude with a discussion of results and planned future work.
Keywords: Mapping science; Interactive data visualizations; User studies (search for similar items in EconPapers)
Date: 2018
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DOI: 10.1007/s11192-017-2596-3
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