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A novel hybrid neural learning algorithm using simulated annealing and quasisecant method

conference contribution
posted on 2010-12-01, 00:00 authored by John YearwoodJohn Yearwood, A Bagirov, S Seifollahi
In this paper, we propose a hybrid learning algorithm for the single hidden layer feedforward neural networks (SLFNs) for data classification. The proposed hybrid algorithm is a two-phase learning algorithm and is based on the quasisecant and the simulated annealing methods. First, the weights between the hidden layer and the output layer nodes (output layer weights) are adjusted by the quasisecant algorithm. Then the simulated annealing is applied for global attribute weighting. The weights between the input layer and the hidden layer nodes are fixed in advance and are not included in the learning process. The proposed two-phase learning of the network is a novel idea and is different from that of the existing ones. The numerical results on some benchmark data sets are also reported and these results are promising.

History

Volume

121

Pagination

205-210

Location

Ballarat, Vic.

Start date

2011-01-01

End date

2011-01-01

ISSN

1445-1336

ISBN-13

9781921770029

Language

eng

Publication classification

EN.1 Other conference paper

Copyright notice

2011, Australian Computer Society

Title of proceedings

AusDM'11 : Proceedings of the 9th Australasian Data Mining Conference 2011

Event

Australasian Data Mining. Conference (9th : 2011 : Ballarat, Vic.)

Publisher

Australian Computer Society

Place of publication

Sydney, N.S.W

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