Sequential Linear Discriminant Analysis in High Dimensions Using Individual Discriminant Functions
High dimensional classification has been highlighted for last two decades and much research has been conducted in order to circumvent challenges encountered in high dimensions. While existing methods have focused mainly on developing classification rules assuming independence of covariates or using...
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Zusammenfassung: | High dimensional classification has been highlighted for last two decades and
much research has been conducted in order to circumvent challenges encountered
in high dimensions. While existing methods have focused mainly on developing
classification rules assuming independence of covariates or using
regularization on the sample covariance matrix or the sample mean vector or
among others, we propose a novel approach that employs the "discriminatory
power" of each covariate, selects a set of important variables yielding the
lowest misclassification rate empirically, and constructs the optimal linear
classifier with selected variables. We carry out simulation studies and analyze
real data sets to illustrate the performance of our proposed classifier by
comparing it with existing classifiers. |
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DOI: | 10.48550/arxiv.2205.03916 |