Global artificial bee colony algorithm for boolean function classification

H Shah, R Ghazali, NM Nawi - … 5th Asian Conference, ACIIDS 2013, Kuala …, 2013 - Springer
Intelligent Information and Database Systems: 5th Asian Conference, ACIIDS …, 2013Springer
Abstract This paper proposed Global Artificial Bee Colony algorithm for training Neural
Network (NN), which is a globalised form of standard Artificial Bee Colony algorithm. NN
trained with the standard backpropagation (BP) algorithm normally utilizes computationally
intensive training algorithms. One of the crucial problems with the BP algorithm is that it can
sometimes yield the networks with suboptimal weights because of the presence of many
local optima in the solution space. To overcome, GABC algorithm used in this work to train …
Abstract
This paper proposed Global Artificial Bee Colony algorithm for training Neural Network (NN), which is a globalised form of standard Artificial Bee Colony algorithm. NN trained with the standard backpropagation (BP) algorithm normally utilizes computationally intensive training algorithms. One of the crucial problems with the BP algorithm is that it can sometimes yield the networks with suboptimal weights because of the presence of many local optima in the solution space. To overcome, GABC algorithm used in this work to train MLP learning for classification problem, the performance of GABC is benchmarked against MLP training with the typical BP, ABC and Particle swarm optimization for boolean function classification. The experimental result shows that MLP-GABC performs better than that standard BP, ABC and PSO for the classification task.
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