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Cellwise robust regularized discriminant analysis
Aerts, Stéphanie; Wilms, Ines
2017Workshop on Sparsity in Applied Mathematics and Statistics (SAMS2017)
 

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Keywords :
Sparsity; Discriminant analysis; Graphical Lasso
Abstract :
[en] Quadratic and Linear Discriminant Analysis (QDA/LDA) are the most often applied classification rules under normality. In QDA, a separate covariance matrix is estimated for each group. If there are more variables than observations in the groups, the usual estimates are singular and cannot be used anymore. Assuming homoscedasticity, as in LDA, reduces the number of parameters to estimate. This rather strong assumption is however rarely verified in practice. Regularized discriminant techniques that are computable in high-dimension and cover the path between the two extremes QDA and LDA have been proposed in the literature. However, these procedures rely on sample covariance matrices. As such, they become inappropriate in presence of cellwise outliers, a type of outliers that is very likely to occur in high-dimensional datasets. We propose cellwise robust counterparts of these regularized discriminant techniques by inserting cellwise robust covariancematrices. Ourmethodologyresultsinafamilyofdiscriminantmethods that are robust against outlying cells, cover the gap between LDA and QDA and are computable in high-dimension.
Disciplines :
Mathematics
Author, co-author :
Aerts, Stéphanie ;  Université de Liège > HEC Liège : UER > UER Opérations : Informatique de gestion
Wilms, Ines;  Katholieke Universiteit Leuven - KUL
Language :
English
Title :
Cellwise robust regularized discriminant analysis
Publication date :
02 June 2017
Event name :
Workshop on Sparsity in Applied Mathematics and Statistics (SAMS2017)
Event organizer :
Université Libre de Bruxelles
Event place :
Bruxelles, Belgium
Event date :
1-2 juin 2017
Audience :
International
Available on ORBi :
since 06 June 2017

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