主成分分析
降维
线性子空间
投影(关系代数)
数学
双曲空间
还原(数学)
维数之咒
模式识别(心理学)
计算机科学
算法
人工智能
纯数学
几何学
作者
Ines Chami,Albert Gu,Dat Tien Nguyen,Christopher Ré
出处
期刊:Cornell University - arXiv
日期:2021-01-01
被引量:4
标识
DOI:10.48550/arxiv.2106.03306
摘要
This paper studies Principal Component Analysis (PCA) for data lying in hyperbolic spaces. Given directions, PCA relies on: (1) a parameterization of subspaces spanned by these directions, (2) a method of projection onto subspaces that preserves information in these directions, and (3) an objective to optimize, namely the variance explained by projections. We generalize each of these concepts to the hyperbolic space and propose HoroPCA, a method for hyperbolic dimensionality reduction. By focusing on the core problem of extracting principal directions, HoroPCA theoretically better preserves information in the original data such as distances, compared to previous generalizations of PCA. Empirically, we validate that HoroPCA outperforms existing dimensionality reduction methods, significantly reducing error in distance preservation. As a data whitening method, it improves downstream classification by up to 3.9% compared to methods that don't use whitening. Finally, we show that HoroPCA can be used to visualize hyperbolic data in two dimensions.
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