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A New Design of Polynomial Neural Networks in the Framework of Genetic Algorithms
Dongwon KIM GwiTae PARK
Publication
IEICE TRANSACTIONS on Information and Systems
Vol.E89D
No.8
pp.24292438 Publication Date: 2006/08/01 Online ISSN: 17451361
DOI: 10.1093/ietisy/e89d.8.2429 Print ISSN: 09168532 Type of Manuscript: PAPER Category: Biocybernetics, Neurocomputing Keyword: new design methodology, polynomial neural networks, genetic algorithm (GA), binary coding, fitness function, weighting factor,
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Summary:
We discuss a new design methodology of polynomial neural networks (PNN) in the framework of genetic algorithm (GA). The PNN is based on the ideas of group method of data handling (GMDH). Each node in the network is very flexible and can carry out polynomial type mapping between input and output variables. But the performances of PNN depend strongly on the number of input variables available to the model, the number of input variables, and the type (order) of the polynomials to each node. In this paper, GA is implemented to better use the optimal inputs and the order of polynomial in each node of PNN. The appropriate inputs and order are evolved accordingly and are tuned gradually throughout the GA iterations. We employ a binary coding for encoding key factors of the PNN into the chromosomes. The chromosomes are made of three subchromosomes which represent the order, number of inputs, and input candidates for modeling. To construct model by using significant approximation and generalization, we introduce the fitness function with a weighting factor. Comparisons with other modeling methods and conventional PNN show that the proposed design method offers encouraging advantages and better performance.

