Review paper

On the Robust PCA and Weiszfeld’s Algorithm

Volume: 82, Issue: 3, Pages: 1017 - 1048
Published: Apr 5, 2019
Abstract
The principal component analysis (PCA) is a powerful standard tool for reducing the dimensionality of data. Unfortunately, it is sensitive to outliers so that various robust PCA variants were proposed in the literature. This paper addresses the robust PCA by successively determining the directions of lines having minimal Euclidean distances from the data points. The corresponding energy functional is non-differentiable at a finite number of...
Paper Details
Title
On the Robust PCA and Weiszfeld’s Algorithm
Published Date
Apr 5, 2019
Volume
82
Issue
3
Pages
1017 - 1048
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