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ENS-t-SNE: Embedding Neighborhoods Simultaneously t-SNE

Jacob Miller    Vahan Huroyan    Raymundo Navarrete    Md Iqbal Hossain    Stephen Kobourov
Abstract

When visualizing a high-dimensional dataset, dimension reduction techniques are commonly employed which provide a single 2 dimensional view of the data. We describe ENS-t-SNE: an algorithm for Embedding Neighborhoods Simultaneously that generalizes the t-Stochastic Neighborhood Embedding approach. By using different viewpoints in ENS-t-SNE’s 3D embedding, one can visualize different types of clusters within the same high-dimensional dataset. This enables the viewer to see and keep track of the different types of clusters, which is harder to do when providing multiple 2D embeddings, where corresponding points cannot be easily identified. We illustrate the utility of ENS-t-SNE with real-world applications and provide an extensive quantitative evaluation with datasets of different types and sizes.

keywords:
Dimension Reduction, Joint Optimization, Simultaneous Embedding, t-SNE
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Research \vgtcpapertypealgorithm/technique \authorfooter Authors are at the University of Arizona, Department of Computer Science Jacob Miller is the corresponding author. Email: [email protected] \teaser [Uncaptioned image] [Uncaptioned image] [Uncaptioned image]