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Visualizing non-metric similarities in multiple maps
Authors:Laurens van?der Maaten  Geoffrey Hinton
Affiliation:1. Pattern Recognition and Bioinformatics Laboratory, Delft University of Technology, Mekelweg 4, Delft, 2628 CD, The Netherlands
2. Department of Computer Science, University of Toronto, 6 King??s College Road, M5S 3G4, Toronto, ON, Canada
Abstract:Techniques for multidimensional scaling visualize objects as points in a low-dimensional metric map. As a result, the visualizations are subject to the fundamental limitations of metric spaces. These limitations prevent multidimensional scaling from faithfully representing non-metric similarity data such as word associations or event co-occurrences. In particular, multidimensional scaling cannot faithfully represent intransitive pairwise similarities in a visualization, and it cannot faithfully visualize “central” objects. In this paper, we present an extension of a recently proposed multidimensional scaling technique called t-SNE. The extension aims to address the problems of traditional multidimensional scaling techniques when these techniques are used to visualize non-metric similarities. The new technique, called multiple maps t-SNE, alleviates these problems by constructing a collection of maps that reveal complementary structure in the similarity data. We apply multiple maps t-SNE to a large data set of word association data and to a data set of NIPS co-authorships, demonstrating its ability to successfully visualize non-metric similarities.
Keywords:
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