cs.AI updates on arXiv.org 10月21日 12:29
UMAP算法分析:力场与聚类
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本文分析了UMAP算法中力场对聚类形成和可视化效果的影响,对比了UMAP与同类算法,揭示了吸引力和排斥力在低维映射中的表现,并提出了改进策略。

arXiv:2503.09101v3 Announce Type: replace-cross Abstract: Uniform manifold approximation and projection (UMAP) is among the most popular neighbor embedding methods. The method relies on attractive and repulsive forces among high-dimensional data points to obtain a low-dimensional embedding. In this paper, we analyze the forces to reveal their effects on cluster formations and visualization and compare UMAP to its contemporaries. Repulsion emphasizes differences, controlling cluster boundaries and inter-cluster distance. Attraction is more subtle, as attractive tension between points can manifest simultaneously as attraction and repulsion in the lower-dimensional mapping. This explains the need for learning rate annealing and motivates the different treatments between attractive and repulsive terms. Moreover, by modifying attraction, we improve the consistency of cluster formation under random initialization. Overall, our analysis makes UMAP and similar embedding methods more interpretable, more robust, and more accurate.

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相关标签

UMAP 聚类分析 数据可视化 力场模型 机器学习
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