Paper ID: 2502.03776 • Published Feb 6, 2025
StarMAP: Global Neighbor Embedding for Faithful Data Visualization
Koshi Watanabe, Keisuke Maeda, Takahiro Ogawa, Miki Haseyama
TL;DR
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Neighbor embedding is widely employed to visualize high-dimensional data;
however, it frequently overlooks the global structure, e.g., intercluster
similarities, thereby impeding accurate visualization. To address this problem,
this paper presents Star-attracted Manifold Approximation and Projection
(StarMAP), which incorporates the advantage of principal component analysis
(PCA) in neighbor embedding. Inspired by the property of PCA embedding, which
can be viewed as the largest shadow of the data, StarMAP introduces the concept
of \textit{star attraction} by leveraging the PCA embedding. This approach
yields faithful global structure preservation while maintaining the
interpretability and computational efficiency of neighbor embedding. StarMAP
was compared with existing methods in the visualization tasks of toy datasets,
single-cell RNA sequencing data, and deep representation. The experimental
results show that StarMAP is simple but effective in realizing faithful
visualizations.