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Training neural networks with harmony search algorithms for classification problems

机译:使用和声搜索算法训练神经网络来解决分类问题

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摘要

Training neural networks (NNs) is a complex task of great importance in the supervised learning area. However, performance of the NNs is mostly dependent on the success of training process, and therefore the training algorithm. This paper addresses the application of harmony search algorithms for the supervised training of feed-forward (FF) type NNs, which are frequently used for classification problems. In this paper, five different variants of harmony search algorithm are studied by giving special attention to Self-adaptive Clobal Best Harmony Search (SGHS) algorithm. A structure suitable to data representation of NNs is adapted to SGHS algorithm. The technique is empirically tested and verified by training NNs on six benchmark classification problems and a real-world problem. Among these benchmark problems two of them have binary classes and remaining four are n-ary classification problems. Real-world problem is related to the classification of most frequently encountered quality defect in a major textile company in Turkey. Overall training time, sum of squared errors, training and testing accuracies of SGHS algorithm, is compared with the other harmony search algorithms and the most widely used standard back-propagation (BP) algorithm. The experiments presented that the SGHS algorithm lends itself very well to the training of NNs and also highly competitive with the compared methods in terms of classification accuracy.
机译:训练神经网络(NNs)是在有监督的学习领域中非常重要的复杂任务。然而,神经网络的性能主要取决于训练过程的成功,因此也取决于训练算法。本文讨论了和声搜索算法在前馈(FF)型神经网络的有监督训练中的应用,前馈通常用于分类问题。在本文中,研究了五个不同的和声搜索算法变体,其中特别注意了自适应整体最佳和声搜索(SGHS)算法。适合于神经网络数据表示的结构适用于SGHS算法。通过对NN进行六个基准分类问题和一个实际问题的培训,对该技术进行了经验测试和验证。在这些基准问题中,其中两个具有二进制类别,其余四个是n元分类问题。实际问题与土耳其一家大型纺织公司最常见的质量缺陷分类有关。将总训练时间,平方误差之和,SGHS算法的训练和测试精度与其他和声搜索算法以及使用最广泛的标准反向传播(BP)算法进行比较。实验表明,SGHS算法非常适合于人工神经网络的训练,并且在分类准确度方面与比较方法相比具有很高的竞争力。

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