Abstract: | When observed data have to be assigned to one or another category, classification rules are needed. Linear discriminant functions provide easily computed rules; weighing the discriminat function according to the variances in the data sets helps reduce classification errors. Classification on the basis of a probability density involves nonlinear decision boundaries. Simple numerical examples for bivariate feature vectors are worked out to demonstrate these approaches to classification. |