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Erschienen in: Neural Computing and Applications 9/2019

21.01.2019 | Original Article

Adaptive memetic method of multi-objective genetic evolutionary algorithm for backpropagation neural network

verfasst von: Ashraf Osman Ibrahim, Siti Mariyam Shamsuddin, Ajith Abraham, Sultan Noman Qasem

Erschienen in: Neural Computing and Applications | Ausgabe 9/2019

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Abstract

In recent years, multi-objective evolutionary optimization algorithms have shown success in different areas of research. Due to their efficiency and power, many researchers have concentrated on adapting evolutionary algorithms to generate Pareto solutions. This paper proposes a new memetic adaptive multi-objective evolutionary algorithm that is based on a three-term backpropagation network (MAMOT). This algorithm is an automatic search method for optimizing the parameters and performance of neural networks, and it relies on the use of the adaptive non-dominated sorting genetic algorithm-II integrated with the backpropagation algorithm, being used as a local search method. The presented MAMOT employs a self-adaptive mechanism toward improving the performance of the proposed algorithm and a local optimizer improving all the individuals in a population in order to obtain better accuracy and connection weights. In addition, it selects an appropriate number of hidden nodes simultaneously. The proposed method was applied to 11 datasets representing pattern classification problems, including two-class, multi-class and complex data reflecting real problems. Experiments were performed, and the results indicated that the proposed method is viable in pattern classification tasks compared to a multi-objective genetic algorithm based on a three-term backpropagation network (MOGAT) and some of the methods mentioned in the literature. The statistical analysis results of the t test and Wilcoxon signed-ranks test also show that the performance of the proposed method is significantly better than MOGAT.

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Metadaten
Titel
Adaptive memetic method of multi-objective genetic evolutionary algorithm for backpropagation neural network
verfasst von
Ashraf Osman Ibrahim
Siti Mariyam Shamsuddin
Ajith Abraham
Sultan Noman Qasem
Publikationsdatum
21.01.2019
Verlag
Springer London
Erschienen in
Neural Computing and Applications / Ausgabe 9/2019
Print ISSN: 0941-0643
Elektronische ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-018-03990-0

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