An adapted linear discriminant analysis with variable selection for the classification in high-dimension, and an application to medical data

KT Le, C Chaux, FJP Richard, E Guedj - Computational Statistics & Data …, 2020 - Elsevier
Computational Statistics & Data Analysis, 2020Elsevier
The classification of normally distributed data in a high-dimensional setting when variables
are more numerous than observations is considered. Under the assumption that the inverse
covariance matrices (the precision matrices) are the same over all groups, the method of the
linear discriminant analysis (LDA) is adapted by including a sparse estimate of these
matrices. Furthermore, a variable selection procedure is developed based on the graph
associated to the estimated precision matrix. For that, a discriminant capacity is defined for …
Abstract
The classification of normally distributed data in a high-dimensional setting when variables are more numerous than observations is considered. Under the assumption that the inverse covariance matrices (the precision matrices) are the same over all groups, the method of the linear discriminant analysis (LDA) is adapted by including a sparse estimate of these matrices. Furthermore, a variable selection procedure is developed based on the graph associated to the estimated precision matrix. For that, a discriminant capacity is defined for each connected component of the graph, and variables of the most discriminant components are kept. The adapted LDA and the variable selection procedure are both evaluated on synthetic data, and applied to real data from PET brain images for the classification of patients with Alzheimer’s disease.
Elsevier
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