Visualizing Time-Dependent Data Using Dynamic t-SNE

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Date
2016
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Volume Title
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The Eurographics Association
Abstract
Many interesting processes can be represented as time-dependent datasets. We define a time-dependent dataset as a sequence of datasets captured at particular time steps. In such a sequence, each dataset is composed of observations (high-dimensional real vectors), and each observation has a corresponding observation across time steps. Dimensionality reduction provides a scalable alternative to create visualizations (projections) that enable insight into the structure of such datasets. However, applying dimensionality reduction independently for each dataset in a sequence may introduce unnecessary variability in the resulting sequence of projections, which makes tracking the evolution of the data significantly more challenging. We show that this issue affects t-SNE, a widely used dimensionality reduction technique. In this context, we propose dynamic t-SNE, an adaptation of t-SNE that introduces a controllable trade-off between temporal coherence and projection reliability. Our evaluation in two time-dependent datasets shows that dynamic t-SNE eliminates unnecessary temporal variability and encourages smooth changes between projections.
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@inproceedings{
10.2312:eurovisshort.20161164
, booktitle = {
EuroVis 2016 - Short Papers
}, editor = {
Enrico Bertini and Niklas Elmqvist and Thomas Wischgoll
}, title = {{
Visualizing Time-Dependent Data Using Dynamic t-SNE
}}, author = {
Rauber, Paulo E.
and
Falcão, Alexandre X.
and
Telea, Alexandru C.
}, year = {
2016
}, publisher = {
The Eurographics Association
}, ISSN = {
-
}, ISBN = {
978-3-03868-014-7
}, DOI = {
10.2312/eurovisshort.20161164
} }
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