Open Access
February 2008 High-Breakdown Robust Multivariate Methods
Mia Hubert, Peter J. Rousseeuw, Stefan Van Aelst
Statist. Sci. 23(1): 92-119 (February 2008). DOI: 10.1214/088342307000000087

Abstract

When applying a statistical method in practice it often occurs that some observations deviate from the usual assumptions. However, many classical methods are sensitive to outliers. The goal of robust statistics is to develop methods that are robust against the possibility that one or several unannounced outliers may occur anywhere in the data. These methods then allow to detect outlying observations by their residuals from a robust fit. We focus on high-breakdown methods, which can deal with a substantial fraction of outliers in the data. We give an overview of recent high-breakdown robust methods for multivariate settings such as covariance estimation, multiple and multivariate regression, discriminant analysis, principal components and multivariate calibration.

Citation

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Mia Hubert. Peter J. Rousseeuw. Stefan Van Aelst. "High-Breakdown Robust Multivariate Methods." Statist. Sci. 23 (1) 92 - 119, February 2008. https://doi.org/10.1214/088342307000000087

Information

Published: February 2008
First available in Project Euclid: 7 July 2008

zbMATH: 1327.62328
MathSciNet: MR2431867
Digital Object Identifier: 10.1214/088342307000000087

Keywords: Breakdown value , influence function , multivariate statistics , Outliers , Partial least squares , principal components , regression , robustness

Rights: Copyright © 2008 Institute of Mathematical Statistics

Vol.23 • No. 1 • February 2008
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