Principal Component Analysis Based on T$\ell_1$-norm Maximization
Machine Learning
2020-05-27 v1 Machine Learning
Abstract
Classical principal component analysis (PCA) may suffer from the sensitivity to outliers and noise. Therefore PCA based on -norm and -norm () have been studied. Among them, the ones based on -norm seem to be most interesting from the robustness point of view. However, their numerical performance is not satisfactory. Note that, although T-norm is similar to -norm () in some sense, it has the stronger suppression effect to outliers and better continuity. So PCA based on T-norm is proposed in this paper. Our numerical experiments have shown that its performance is superior than PCA- and SPCA as well as PCA, PCA- obviously.
Keywords
Cite
@article{arxiv.2005.12263,
title = {Principal Component Analysis Based on T$\ell_1$-norm Maximization},
author = {Xiang-Fei Yang and Yuan-Hai Shao and Chun-Na Li and Li-Ming Liu and Nai-Yang Deng},
journal= {arXiv preprint arXiv:2005.12263},
year = {2020}
}