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Using multiple attribute-based explanations of multidimensional projections to explore high-dimensional data

Zonglin Tian, Xiaorui Zhai, Daan van Driel, Gijs van Steenpaal, Mateus Espadoto, Alexandru Telea

2021Computers & Graphics18 citationsDOIOpen Access PDF

Abstract

Multidimensional projections (MPs) are effective methods for visualizing high-dimensional datasets to find structures in the data like groups of similar points and outliers. The insights obtained from MPs can be amplified by complementing these techniques by several so-called explanatory mechanisms. We present and discuss a set of six such mechanisms that explain MPs in terms of similar dimensions, local dimensionality, and dimension correlations. We implement our explanatory tools using an image-based approach, which is efficient to compute, scales well visually for large and dense MP scatterplots, and can handle any projection technique. We demonstrate how the provided explanatory views can be combined to augment each other’s value and thereby lead to refined insights in the data for several high-dimensional datasets, and how these insights correlate with known facts about the data under study.

Topics & Concepts

Computer scienceMultidimensional dataData miningHigh dimensionalArtificial intelligenceNeural Networks and ApplicationsImage Retrieval and Classification TechniquesImage Processing and 3D Reconstruction
Using multiple attribute-based explanations of multidimensional projections to explore high-dimensional data | Litcius