Robustifying principal component analysis with spatial sign vectors
Taskinen, S., Koch, I., & Oja, H. (2012). Robustifying principal component analysis with spatial sign vectors. Statistics and Probability Letters, 82(4), 765-774. https://doi.org/10.1016/j.spl.2012.01.001
Published in
Statistics and Probability LettersDate
2012Copyright
© Elsevier. This is a pre-print version of an article whose final and definitive form has been published by Elsevier.
In this paper, we apply orthogonally equivariant spatial sign covariance matrices as well as their affine equivariant counterparts in principal component analysis. The influence functions and asymptotic covariance matrices of eigenvectors based on robust covariance estimators are derived in order to compare the robustness and efficiency properties. We show in particular that the estimators that use pairwise differences of the observed data have very good efficiency properties, providing practical robust alternatives to classical sample covariance matrix based methods.
Publisher
ElsevierISSN Search the Publication Forum
0167-7152Keywords
Publication in research information system
https://converis.jyu.fi/converis/portal/detail/Publication/21435769
Metadata
Show full item recordCollections
Related items
Showing items with similar title or keywords.
-
k-Step shape estimators based on spatial signs and ranks
Taskinen, Sara; Sirkiä, Seija; Oja, Hannu (Elsevier, 2010)In this paper, the shape matrix estimators based on spatial sign and rank vectors are considered. The estimators considered here are slight modifications of the estimators introduced in Dümbgen (1998) and Oja and Randles ... -
Influence functions and efficiencies of the canonical correlation and vector estimates based on scatter and shape matrices
Taskinen, Sara; Croux, Christophe; Kankainen, Annaliisa; Ollila, Esa; Oja, Hannu (Elsevier, 2006)In this paper, the influence functions and limiting distributions of the canonical correlations and coefficients based on affine equivariant scatter matrices are developed for elliptically symmetric distributions. General ... -
Robust Principal Component Analysis of Data with Missing Values
Kärkkäinen, Tommi; Saarela, Mirka (Springer International Publishing, 2015)Principal component analysis is one of the most popular machine learning and data mining techniques. Having its origins in statistics, principal component analysis is used in numerous applications. However, there seems ... -
Sign and rank covariance matrices with applications to multivariate analysis
Ollila, Esa (University of Jyväskylä, 2002) -
Single-trial-based temporal principal component analysis on extracting event-related potentials of interest for an individual subject
Zhang, Guanghui; Li, Xueyan; Lu, Yingzhi; Tiihonen, Timo; Chang, Zheng; Cong, Fengyu (Elsevier, 2023)Background: Temporal principal component analysis (tPCA) has been widely used to extract event-related potentials (ERPs) at group level of multiple subjects ERP data and it assumes that the underlying factor loading is ...