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An Adaptive Classifier Based on Artificial Immune Network

机译:基于人工免疫网络的自适应分类器

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摘要

The central problem in training a radial basis function neural network is the selection of hidden layer neurons, which includes the selection of the center and width of those neurons. In this paper, we propose a new method to construct an adaptive RBF neural network classifier based on artificial immune network algorithm. A multiple granularities immune network (MGIN) algorithm is employed to get the candidate hidden neurons and construct an original RBF network including all candidate neurons, and a removing redundant neurons procedure is used to simplify the classifier finally. Some experimental results show that the network obtained tends to generalize well.
机译:训练径向基函数神经网络的中心问题是隐藏层神经元的选择,其中包括那些神经元的中心和宽度的选择。本文提出了一种基于人工免疫网络算法的自适应RBF神经网络分类器的新方法。采用多粒度免疫网络算法获取候选隐藏神经元,构建包含所有候选神经元的原始RBF网络,最后通过去除冗余神经元程序简化分类器。一些实验结果表明,所获得的网络易于推广。

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