Search
 
Home| Contact Us| Join Our Mailing List| New Journals| Browse Journals| Journal Prices| For Authors| Advanced Search
HOME > JOURNALS BY SUBJECT > COMPUTER SCIENCE > IJNS
International Journal of Neural Systems (IJNS)
Current Issue | 2009 | 2008 | 2007 | All Volumes (1989-2009)

Volume: 18, Issue: 1(2008) pp. 45-58     DOI: 10.1142/S0129065708001361
Abstract | Full Text (PDF, 343KB) | References
Title: TOWARDS EXPANDING RELEVANCE VECTOR MACHINES TO LARGE SCALE DATASETS
Author(s):
CATARINA SILVA
CISUC — Departamento Eng. Informática, Universidade de Coimbra, Portugal

ESTG — Instituto Politécnico de Leiria, Portugal

BERNARDETE RIBEIRO
ESTG — Instituto Politécnico de Leiria, Portugal
Abstract:
In this paper we develop and analyze methods for expanding automated learning of Relevance Vector Machines (RVM) to large scale text sets. RVM rely on Bayesian inference learning and while maintaining state-of-the-art performance, offer sparse and probabilistic solutions. However, efforts towards applying RVM to large scale sets have met with limited success in the past, due to computational constraints. We propose a diversified set of divide-and-conquer approaches where decomposition techniques promote the definition of smaller working sets that permit the use of all training examples. The rationale is that by exploring incremental, ensemble and boosting strategies, it is possible to improve classification performance, taking advantage of the large training set available. Results on Reuters-21578 and RCV1 are presented, showing performance gains and maintaining sparse solutions that can be deployed in distributed environments.
Keywords:
Large scale learning; text classification; relevance vector machines

Imperial College Press  |  Global Publishing  |  Asia-Pacific Biotech News  |  Innovation Magazine
Labcreations Co  |  Meeting Matters  |  National Academies Press

World Scientific is a Member of CrossRef

Copyright © 2010 World Scientific Publishing Co. All rights reserved.