Title

Ag-Art: An Adaptive Approach To Evolving Art Architectures

Keywords

ARTMAP; Category proliferation; Classification; Genetic algorithms; Genetic operators; Machine learning

Abstract

This paper focuses on classification problems, and in particular on the evolution of ARTMAP architectures using genetic algorithms, with the objective of improving generalization performance and alleviating the adaptive resonance theory (ART) category proliferation problem. In a previous effort, we introduced evolutionary fuzzy ARTMAP (FAM), referred to as genetic Fuzzy ARTMAP (GFAM). In this paper we apply an improved genetic algorithm to FAM and extend these ideas to two other ART architectures; ellipsoidal ARTMAP (EAM) and Gaussian ARTMAP (GAM). One of the major advantages of the proposed improved genetic algorithm is that it adapts the GA parameters automatically, and in a way that takes into consideration the intricacies of the classification problem under consideration. The resulting genetically engineered ART architectures are justifiably referred to as AG-FAM, AG-EAM and AG-GAM or collectively as AG-ART (adaptive genetically engineered ART). We compare the performance (in terms of accuracy, size, and computational cost) of the AG-ART architectures with GFAM, and other ART architectures that have appeared in the literature and attempted to solve the category proliferation problem. Our results demonstrate that AG-ART architectures exhibit better performance than their other ART counterparts (semi-supervised ART) and better performance than GFAM. We also compare AG-ART's performance to other related results published in the classification literature, and demonstrate that AG-ART architectures exhibit competitive generalization performance and, quite often, produce smaller size classifiers in solving the same classification problems. We also show that AG-ART's performance gains are achieved within a reasonable computational budget. © 2008 Elsevier B.V. All rights reserved.

Publication Date

6-1-2009

Publication Title

Neurocomputing

Volume

72

Issue

10-12

Number of Pages

2079-2092

Document Type

Article

Personal Identifier

scopus

DOI Link

https://doi.org/10.1016/j.neucom.2008.09.016

Socpus ID

67349177821 (Scopus)

Source API URL

https://api.elsevier.com/content/abstract/scopus_id/67349177821

This document is currently not available here.

Share

COinS