数据分析中黎曼流形上的降维方法 / Dimensionality Reduction on Riemannian Manifolds in Data Analysis
1️⃣ 一句话总结
这篇论文提出并研究了基于黎曼几何的降维方法,通过利用数据的流形结构(如测地线距离和切空间表示),显著提升了在弯曲空间(如超球面)中数据的表示质量和分类性能,是传统欧几里得方法(如PCA)的有效非线性推广。
In this work, we investigate Riemannian geometry based dimensionality reduction methods that respect the underlying manifold structure of the data. In particular, we focus on Principal Geodesic Analysis (PGA) as a nonlinear generalization of PCA for manifold valued data, and extend discriminant analysis through Riemannian adaptations of other known dimensionality reduction methods. These approaches exploit geodesic distances, tangent space representations, and intrinsic statistical measures to achieve more faithful low dimensional embeddings. We also discuss related manifold learning techniques and highlight their theoretical foundations and practical advantages. Experimental results on representative datasets demonstrate that Riemannian methods provide improved representation quality and classification performance compared to their Euclidean counterparts, especially for data constrained to curved spaces such as hyperspheres and symmetric positive definite manifolds. This study underscores the importance of geometry aware dimensionality reduction in modern machine learning and data science applications.
数据分析中黎曼流形上的降维方法 / Dimensionality Reduction on Riemannian Manifolds in Data Analysis
这篇论文提出并研究了基于黎曼几何的降维方法,通过利用数据的流形结构(如测地线距离和切空间表示),显著提升了在弯曲空间(如超球面)中数据的表示质量和分类性能,是传统欧几里得方法(如PCA)的有效非线性推广。
源自 arXiv: 2602.05936