Spherical Rotation Dimension Reduction with Geometric Loss Functions
Abstract
Modern datasets often exhibit high dimensionality, yet the data reside in low-dimensional manifolds that can reveal underlying geometric structures critical for data analysis. A prime example of such a dataset is a collection of cell cycle measurements, where the inherently cyclical nature of the process can be represented as a circle or sphere. Motivated by the need to analyze these types of datasets, we propose a nonlinear dimension reduction method, Spherical Rotation Component Analysis (SRCA), that incorporates geometric information to better approximate low-dimensional manifolds. SRCA is a versatile method designed to work in both high-dimensional and small sample size settings. By employing spheres or ellipsoids, SRCA provides a low-rank spherical representation of the data with general theoretic guarantees, effectively retaining the geometric structure of the dataset during dimensionality reduction. A comprehensive simulation study, along with a successful application to human cell cycle data, further highlights the advantages of SRCA compared to state-of-the-art alternatives, demonstrating its superior performance in approximating the manifold while preserving inherent geometric structures.
Cite
Text
Luo et al. "Spherical Rotation Dimension Reduction with Geometric Loss Functions." Journal of Machine Learning Research, 2024.Markdown
[Luo et al. "Spherical Rotation Dimension Reduction with Geometric Loss Functions." Journal of Machine Learning Research, 2024.](https://mlanthology.org/jmlr/2024/luo2024jmlr-spherical/)BibTeX
@article{luo2024jmlr-spherical,
title = {{Spherical Rotation Dimension Reduction with Geometric Loss Functions}},
author = {Luo, Hengrui and Purvis, Jeremy E. and Li, Didong},
journal = {Journal of Machine Learning Research},
year = {2024},
pages = {1-55},
volume = {25},
url = {https://mlanthology.org/jmlr/2024/luo2024jmlr-spherical/}
}