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Global Artificial Bee Colony Algorithm for Boolean Function Classification

机译:布尔函数分类的全局人工蜂群算法

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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.
机译:本文提出了一种用于训练神经网络的全局人工蜂群算法,它是标准人工蜂群算法的一种全球化形式。用标准反向传播(BP)算法训练的NN通常利用计算密集型训练算法。 BP算法的关键问题之一是,由于解决方案空间中存在许多局部最优解,有时它可能会使网络的权重达到次优状态。为了克服这一问题,GABC算法用于训练针对分类问题的MLP学习,将GABC的性能与针对布尔函数分类的典型BP,ABC和粒子群优化的MLP训练进行了对比。实验结果表明,对于分类任务,MLP-GABC的性能优于标准BP,ABC和PSO。

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