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An improved fuzzy ARTMAP and Q-learning agent model for pattern classification

journal contribution
posted on 2019-06-04, 00:00 authored by F Pourpanah, R Wang, Chee Peng LimChee Peng Lim, X Wang, M Seera, C J Tan
The Fuzzy ARTMAP (FAM) network is an online supervised neural network that operates by computing the similarity level between the new sample and those prototype nodes stored in its network against a threshold. In our previous study, we have developed a multi-agent system consisting of an ensemble of FAM networks and Q-learning, known as QMACS, for data classification. In this paper, an Improved QMACS (IQMACS) model with trust measurement using a combination of Q-learning and Bayesian formalism is proposed. A number of benchmark and real-world problems, i.e., motor fault detection and human motion detection, are conducted to evaluate the effectiveness of IQMACS. Statistical features are extracted from real-world case studies and utilized for classification with IQMACS, QMACS, and their constituents. The experimental results indicate that IQMACS produces better classification performance by combining the outcomes of its constituents as compared with those of QMACS and other related methods.

History

Journal

Neurocomputing

Publisher

Elsevier

Location

Amsterdam, The Netherlands

ISSN

0925-2312

eISSN

1872-8286

Language

eng

Notes

In press

Publication classification

C1 Refereed article in a scholarly journal

Copyright notice

2019, Elsevier B.V.