2021
DOI: 10.48550/arxiv.2106.15481
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Interactive Dimensionality Reduction for Comparative Analysis

Takanori Fujiwara,
Xinhai Wei,
Jian Zhao
et al.

Abstract: Finding the similarities and differences between two or more groups of datasets is a fundamental analysis task. For high-dimensional data, dimensionality reduction (DR) methods are often used to find the characteristics of each group. However, existing DR methods provide limited capability and flexibility for such comparative analysis as each method is designed only for a narrow analysis target, such as identifying factors that most differentiate groups. In this work, we introduce an interactive DR framework w… Show more

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“…For example, visual augmentations to highlight distortions in DR projections have included superimposed heat maps [2,39], lines whose lengths indicate the degree of projection error [41], and animations between projection axes [12]. In addition, a few systems have incorporated multiple projections, either for interactive parameter selection [13,34] or to compare proximity relationships in different variants [10]. In this work, we attempt to extend some of these techniques to the problems specific to embeddings in ML, including dataset scale and the need to compare more than two spaces.…”
Section: Dimensionality Reduction Visualizationmentioning
confidence: 99%
“…For example, visual augmentations to highlight distortions in DR projections have included superimposed heat maps [2,39], lines whose lengths indicate the degree of projection error [41], and animations between projection axes [12]. In addition, a few systems have incorporated multiple projections, either for interactive parameter selection [13,34] or to compare proximity relationships in different variants [10]. In this work, we attempt to extend some of these techniques to the problems specific to embeddings in ML, including dataset scale and the need to compare more than two spaces.…”
Section: Dimensionality Reduction Visualizationmentioning
confidence: 99%