Comparative Evaluation of Animated Scatter Plot Transitions
Scatter plots are popular for displaying 2D data, but in practice, many data sets have more than two dimensions. For the analysis of such multivariate data, it is often necessary to switch between scatter plots of different dimension pairs, e.g., in a scatter plot matrix (SPLOM). Alternative approac...
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Zusammenfassung: | Scatter plots are popular for displaying 2D data, but in practice, many data
sets have more than two dimensions. For the analysis of such multivariate data,
it is often necessary to switch between scatter plots of different dimension
pairs, e.g., in a scatter plot matrix (SPLOM). Alternative approaches include a
"grand tour" for an overview of the entire data set or creating artificial axes
from dimensionality reduction (DR). A cross-cutting concern in all techniques
is the ability of viewers to find correspondence between data points in
different views. Previous work proposed animations to preserve the mental map
between view changes and to trace points as well as clusters between scatter
plots of the same underlying data set. In this paper, we evaluate a variety of
spline- and rotation-based view transitions in a crowdsourced user study
focusing on ecological validity. Using the study results, we assess each
animation's suitability for tracing points and clusters across view changes. We
evaluate whether the order of horizontal and vertical rotation is relevant for
task accuracy. The results show that rotations with an orthographic camera or
staged expansion of a depth axis significantly outperform all other animation
techniques for the traceability of individual points. Further, we provide a
ranking of the animated transition techniques for traceability of individual
points. However, we could not find any significant differences for the
traceability of clusters. Furthermore, we identified differences by animation
direction that could guide further studies to determine potential confounds for
these differences. We publish the study data for reuse and provide the
animation framework as a D3.js plug-in. |
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DOI: | 10.48550/arxiv.2401.04692 |