Bacterial foraging optmization algorithm for neural network learning enhancement

Backpropagation algorithm is used to solve many real world problems using the concept of Multilayer Perceptron. However, main disadvantages of Backpropagation are its convergence rate is relatively slow, and it is often trapped at the local minima. To solve this problem, in literatures, evolutionary...

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Main Author: Al-Qasem Al-Hadi, Ismail Ahmed
Format: Thesis
Language:English
Published: 2011
Subjects:
Online Access:http://eprints.utm.my/32824/5/IsmailAhmedAlQasemAl-HadiMFSKSM2011.pdf
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author Al-Qasem Al-Hadi, Ismail Ahmed
author_facet Al-Qasem Al-Hadi, Ismail Ahmed
author_sort Al-Qasem Al-Hadi, Ismail Ahmed
collection ePrints
description Backpropagation algorithm is used to solve many real world problems using the concept of Multilayer Perceptron. However, main disadvantages of Backpropagation are its convergence rate is relatively slow, and it is often trapped at the local minima. To solve this problem, in literatures, evolutionary algorithms such as Particle Swarm Optimization algorithm has been applied in feedforward neural network to optimize the learning process in terms of convergence rate and classification accuracy but this process needs longer training time. To provide alternative solution, in this study, Bacteria Foraging Optimization Algorithm has been selected and applied in feedforward neural network to enhance the learning process in terms of convergence rate and classification accuracy. One of the main processes in Bacteria Foraging Optimization algorithm is the chemotactic movement of a virtual bacterium that makes a trial solution of the optimization problem. This process of chemotactic movement is guided to make the learning process of Artificial Neural Network faster. The developed Bacteria Foraging Optimization Algorithm Feedforward Neural Network (BFOANN) is compared against Particle Swarm Optimization Feedforward Neural Network (PSONN). The results show that BFOANN gave better performance in terms of convergence rate and classification accuracy compared to PSONN.
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spelling utm.eprints-328242018-05-27T07:55:12Z http://eprints.utm.my/32824/ Bacterial foraging optmization algorithm for neural network learning enhancement Al-Qasem Al-Hadi, Ismail Ahmed QA75 Electronic computers. Computer science Backpropagation algorithm is used to solve many real world problems using the concept of Multilayer Perceptron. However, main disadvantages of Backpropagation are its convergence rate is relatively slow, and it is often trapped at the local minima. To solve this problem, in literatures, evolutionary algorithms such as Particle Swarm Optimization algorithm has been applied in feedforward neural network to optimize the learning process in terms of convergence rate and classification accuracy but this process needs longer training time. To provide alternative solution, in this study, Bacteria Foraging Optimization Algorithm has been selected and applied in feedforward neural network to enhance the learning process in terms of convergence rate and classification accuracy. One of the main processes in Bacteria Foraging Optimization algorithm is the chemotactic movement of a virtual bacterium that makes a trial solution of the optimization problem. This process of chemotactic movement is guided to make the learning process of Artificial Neural Network faster. The developed Bacteria Foraging Optimization Algorithm Feedforward Neural Network (BFOANN) is compared against Particle Swarm Optimization Feedforward Neural Network (PSONN). The results show that BFOANN gave better performance in terms of convergence rate and classification accuracy compared to PSONN. 2011 Thesis NonPeerReviewed application/pdf en http://eprints.utm.my/32824/5/IsmailAhmedAlQasemAl-HadiMFSKSM2011.pdf Al-Qasem Al-Hadi, Ismail Ahmed (2011) Bacterial foraging optmization algorithm for neural network learning enhancement. Masters thesis, Universiti Teknologi Malaysia, Faculty of Computer Science and Information System.
spellingShingle QA75 Electronic computers. Computer science
Al-Qasem Al-Hadi, Ismail Ahmed
Bacterial foraging optmization algorithm for neural network learning enhancement
title Bacterial foraging optmization algorithm for neural network learning enhancement
title_full Bacterial foraging optmization algorithm for neural network learning enhancement
title_fullStr Bacterial foraging optmization algorithm for neural network learning enhancement
title_full_unstemmed Bacterial foraging optmization algorithm for neural network learning enhancement
title_short Bacterial foraging optmization algorithm for neural network learning enhancement
title_sort bacterial foraging optmization algorithm for neural network learning enhancement
topic QA75 Electronic computers. Computer science
url http://eprints.utm.my/32824/5/IsmailAhmedAlQasemAl-HadiMFSKSM2011.pdf
work_keys_str_mv AT alqasemalhadiismailahmed bacterialforagingoptmizationalgorithmforneuralnetworklearningenhancement