Personal tools
You are here: Home Publications Generalized Discriminant Analysis Using a Kernel Approach
Document Actions

G. Baudat and F. Anouar (2000)

Generalized Discriminant Analysis Using a Kernel Approach

Neural Computation, 12(1).

We present a new method that we call Generalized Discriminant Analysis (GDA) to deal with nonlinear discriminant analysis using kernel function operator. The underlying theory is close to the Support Vector Machines (SVM) insofar as the GDA method provides a mapping of the input vectors into high dimensional feature space. In the transformed space, linear properties make it easy to extend and generalize the classical Linear Discriminant Analysis (LDA) to non linear discriminant analysis. The formulation is expressed as an eigenvalue problem resolution. Using a different kernel, one can cover a wide class of nonlinearities. For both simulated data and alternate kernels, we give classification results as well as the shape of the separating function. The results are confirmed using a real data to perform seed classification.

To appear
by admin last modified 2007-01-31 11:08

Powered by Plone CMS, the Open Source Content Management System