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  • Gazi University Journal of Science
  • Volume:28 Issue:1
  • A Hybrid Applied Optimization Algorithm for Training Multi-Layer Neural Networks in Data Classificat...

A Hybrid Applied Optimization Algorithm for Training Multi-Layer Neural Networks in Data Classification

Authors : H Hasan ÖRKÇÜ, Mustafa DOĞAN, Mediha ÖRKÇÜ
Pages : 115-132
View : 51 | Download : 13
Publication Date : 2015-02-23
Article Type : Research Paper
Abstract :Backpropagation algorithm is classical technique used in the training of the artificial neural networks. Since this algorithm has many disadvantages, the training of the neural networks has been implemented with various optimization methods. In this paper, a hybrid intelligent model, i.e., hybridGSA, is developed to training a rtificial neural networks insert ignore into journalissuearticles values(ANN); and undertaking data classification problems. The hybrid intelligent system aims to exploit the advantages of genetic and simulated annealing algorithms and, at the same time, alleviate their limitations. To evaluate the effectiveness of the hybridGSA method, three benchmark data sets, i.e., Breast Cancer Wisconsin, Pima Indians Diabetes, and Liver Disorders from the UCI Repository of Machine Learning, and a simulation experiment are used for evaluation. A comparative analysis on the real data sets and simulation data shows that the hybridGSA algorithm may offer efficient alternative to traditional training methods for the classification problem.
Keywords : Artificial neural networks, data classification, training of neural networks, genetic algorithm, simulated annealing

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