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arxiv: 1506.02927 · v1 · pith:LWM64DO6new · submitted 2015-06-09 · 📊 stat.AP · stat.ME

Analyse discriminante matricielle descriptive. Application a l'\'etude de signaux EEG

classification 📊 stat.AP stat.ME
keywords datadiscriminantapplicationapproachcolumndescriptivelinearanalyse
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We focus on the descriptive approach to linear discriminant analysis for matrix-variate data in the binary case. Under a separability assumption on row and column variability, the most discriminant linear combinations of rows and columns are determined by the singular value decomposition of the difference of the class-averages with the Mahalanobis metric in the row and column spaces. This approach provides data representations of data in two-dimensional or three-dimensional plots and singles out discriminant components. An application to electroencephalographic multi-sensor signals illustrates the relevance of the method.

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