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A hybrid neural learning algorithm using evolutionary learning and derivative free local search method

journal contribution
posted on 2006-06-01, 00:00 authored by R Ghosh, John YearwoodJohn Yearwood, M Ghosh, A Bagirov
In this paper we investigate a hybrid model based on the Discrete Gradient method and an evolutionary strategy for determining the weights in a feed forward artificial neural network. Also we discuss different variants for hybrid models using the Discrete Gradient method and an evolutionary strategy for determining the weights in a feed forward artificial neural network. The Discrete Gradient method has the advantage of being able to jump over many local minima and find very deep local minima. However, earlier research has shown that a good starting point for the discrete gradient method can improve the quality of the solution point. Evolutionary algorithms are best suited for global optimisation problems. Nevertheless they are cursed with longer training times and often unsuitable for real world application. For optimisation problems such as weight optimisation for ANNs in real world applications the dimensions are large and time complexity is critical. Hence the idea of a hybrid model can be a suitable option. In this paper we propose different fusion strategies for hybrid models combining the evolutionary strategy with the discrete gradient method to obtain an optimal solution much quicker. Three different fusion strategies are discussed: a linear hybrid model, an iterative hybrid model and a restricted local search hybrid model. Comparative results on a range of standard datasets are provided for different fusion hybrid models.

History

Journal

International journal of neural systems

Volume

16

Issue

3

Pagination

201 - 213

Publisher

World Scientific Publishing

Location

Singapore, Singapore

ISSN

0129-0657

eISSN

1793-6462

Language

eng

Publication classification

C1.1 Refereed article in a scholarly journal

Copyright notice

2006, World Scientific Publishing