
Proceedings Paper
Enhancing multidimensional data projection using density-based motionFormat | Member Price | Non-Member Price |
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Paper Abstract
The density of points within multidimensional clusters can impact the effective representation of distances and groups when
projecting data from higher dimensions onto a lower dimensional space. This paper examines the use of motion to retain
an accurate representation of the point density of clusters that might otherwise be lost when a multidimensional dataset is
projected into a 2D space. We investigate how users interpret motion in 2D scatterplots and whether or not they are able to
effectively interpret the point density of the clusters through motion. Specifically, we consider different types of density-based
motion, where the magnitude of the motion is directly related to the density of the clusters. We conducted a series
of user studies with synthetic datasets to explore how motion can help users in various multidimensional data analyses,
including cluster identification, similarity seeking, and cluster ranking tasks. In a first user study, we evaluated the motions
in terms of task success, task completion times, and subject confidence. Our findings indicate that, for some tasks, motion
outperforms the static scatterplots; circular path motions in particularly give significantly better results compared to the
other motions. In a second user study, we found that users were easily able to distinguish clusters with different densities
as long as the magnitudes of motion were above a particular threshold. Our results indicate that it may be effective to
incorporate motion into visualization systems that enable the exploration and analysis of multidimensional data.
Paper Details
Date Published: 8 February 2015
PDF: 14 pages
Proc. SPIE 9397, Visualization and Data Analysis 2015, 93970L (8 February 2015); doi: 10.1117/12.2076989
Published in SPIE Proceedings Vol. 9397:
Visualization and Data Analysis 2015
David L. Kao; Ming C. Hao; Mark A. Livingston; Thomas Wischgoll, Editor(s)
PDF: 14 pages
Proc. SPIE 9397, Visualization and Data Analysis 2015, 93970L (8 February 2015); doi: 10.1117/12.2076989
Show Author Affiliations
Ronak Etemadpour, Oklahoma State Univ. (United States)
Angus G. Forbes, Univ. of Illinois at Chicago (United States)
Published in SPIE Proceedings Vol. 9397:
Visualization and Data Analysis 2015
David L. Kao; Ming C. Hao; Mark A. Livingston; Thomas Wischgoll, Editor(s)
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