UMATO: Bridging Local and Global Structures for Reliable Visual Analytics with Dimensionality Reduction
Hyeon Jeon, Kwon Ko, Soohyun Lee, Jake Hyun, Taehyun Yang, Gyehun Go, Jaemin Jo, Jinwook Seo

TL;DR
UMATO is a novel dimensionality reduction method that effectively balances local and global structure preservation in high-dimensional data, improving the reliability of visual analytics.
Contribution
UMATO introduces a two-phase optimization process that enhances global structure preservation while maintaining scalability and stability over existing methods like UMAP.
Findings
UMATO outperforms UMAP in global structure preservation.
UMATO demonstrates better scalability and stability.
Case studies show improved reliability in visual analytics.
Abstract
Due to the intrinsic complexity of high-dimensional (HD) data, dimensionality reduction (DR) techniques cannot preserve all the structural characteristics of the original data. Therefore, DR techniques focus on preserving either local neighborhood structures (local techniques) or global structures such as pairwise distances between points (global techniques). However, both approaches can mislead analysts to erroneous conclusions about the overall arrangement of manifolds in HD data. For example, local techniques may exaggerate the compactness of individual manifolds, while global techniques may fail to separate clusters that are well-separated in the original space. In this research, we provide a deeper insight into Uniform Manifold Approximation with Two-phase Optimization (UMATO), a DR technique that addresses this problem by effectively capturing local and global structures. UMATO…
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