This paper enlarges the covariance configurations, on which the classical linear discriminant analysis is based, by considering the four models arising from the spectral decomposition when eigenvalues and/or eigenvectors matrices are allowed to vary or not between groups. Similarly to the classical approach, the assessment of these configurations is accomplished via a test on the training set. The discrimination rule is then built upon the configuration provided by the test, considering or not the unlabelled data. Numerical experiments, on simulated and real data, have been performed to evaluate the gain of our proposal with respect to the linear discriminant analysis.
Bagnato, L., Greselin, F., Punzo, A. (2014). On the Spectral Decomposition in Normal Discriminant Analysis. COMMUNICATIONS IN STATISTICS. SIMULATION AND COMPUTATION, 43(6), 1471-1489 [10.1080/03610918.2012.735318].
On the Spectral Decomposition in Normal Discriminant Analysis
GRESELIN, FRANCESCA;
2014
Abstract
This paper enlarges the covariance configurations, on which the classical linear discriminant analysis is based, by considering the four models arising from the spectral decomposition when eigenvalues and/or eigenvectors matrices are allowed to vary or not between groups. Similarly to the classical approach, the assessment of these configurations is accomplished via a test on the training set. The discrimination rule is then built upon the configuration provided by the test, considering or not the unlabelled data. Numerical experiments, on simulated and real data, have been performed to evaluate the gain of our proposal with respect to the linear discriminant analysis.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.