Large margin vector quantization


Autoria(s): Buckingham, Lawrence I.; Geva, Shlomo
Data(s)

11/12/2000

Resumo

In this paper we describe the Large Margin Vector Quantization algorithm (LMVQ), which uses gradient ascent to maximise the margin of a radial basis function classifier. We present a derivation of the algorithm, which proceeds from an estimate of the class-conditional probability densities. We show that the key behaviour of Kohonen's well-known LVQ2 and LVQ3 algorithms emerge as natural consequences of our formulation. We compare the performance of LMVQ with that of Kohonen's LVQ algorithms on an artificial classification problem and several well known benchmark classification tasks. We find that the classifiers produced by LMVQ attain a level of accuracy that compares well with those obtained via LVQ1, LVQ2 and LVQ3, with reduced storage complexity. We indicate future directions of enquiry based on the large margin approach to Learning Vector Quantization.

Formato

application/pdf

Identificador

http://eprints.qut.edu.au/34210/

Relação

http://eprints.qut.edu.au/34210/1/c34210.pdf

http://www.cse.unsw.edu.au/~achim/PKAW2000/

Buckingham, Lawrence I. & Geva, Shlomo (2000) Large margin vector quantization. In Proceedings of the Pacific Knowledge Acquisition Workshop (PKAW 2000), Coogee Beach, Sydney.

Direitos

Copyright 2000 Lawrence I. Buckingham and Shlomo Geva

Fonte

Computer Science; Faculty of Science and Technology

Palavras-Chave #010303 Optimisation #vector quantization #classification #LVQ #Maximum Margin
Tipo

Conference Paper