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GFKL
2005
Springer

Robust Multivariate Methods: The Projection Pursuit Approach

14 years 5 months ago
Robust Multivariate Methods: The Projection Pursuit Approach
Projection pursuit was originally introduced to identify structures in multivariate data clouds (Huber, 1985). The idea of projecting data to a lowdimensional subspace can also be applied to multivariate statistical methods. The robustness of the methods can be achieved by applying robust estimators to the lower-dimensional space. Robust estimation in high dimensions can thus be avoided which usually results in a faster computation. Moreover, flat data sets where the number of variables is much higher than the number of observations can be easier analyzed in a robust way. We will focus on the projection pursuit approach for robust continuum regression (Serneels et al., 2005). A new algorithm is introduced and compared with the reference algorithm as well as with classical continuum regression.
Peter Filzmoser, Sven Serneels, Christophe Croux,
Added 27 Jun 2010
Updated 27 Jun 2010
Type Conference
Year 2005
Where GFKL
Authors Peter Filzmoser, Sven Serneels, Christophe Croux, Pierre J. Van Espen
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