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Novel weighting in single hidden layer feedforward neural networks for data classification

机译:单隐藏层前馈神经网络中的新型加权用于数据分类

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摘要

We propose a binary classifier based on the single hidden layer feedforward neural network (SLFN) using radial basis functions (RBFs) and sigmoid functions in the hidden layer. We use a modified attribute-class correlation measure to determine the weights of attributes in the networks. Moreover, we propose new weights called as influence weights to utilize in the weights connecting the input layer and the hidden layer nodes (hidden weights) of the network with sigmoid hidden nodes. These weights are calculated as the sum of conditional probabilities of attribute values given class labels. Our learning procedure of the networks is based on the extreme learning machines; in which the parameters of the hidden nodes are first calculated and then the weights connecting the hidden nodes and output nodes (output weights) are found. The results of the networks with the proposed weights on some benchmark data sets show improvements over those of the conventional networks.
机译:我们提出了一种基于单隐层前馈神经网络(SLFN)的二进制分类器,该模型使用了隐层中的径向基函数(RBF)和S形函数。我们使用改进的属性类相关性度量来确定网络中属性的权重。此外,我们提出了新的权重,称为影响权重,可用于连接具有S形隐藏节点的网络的输入层和隐藏层节点的权重(隐藏权重)。这些权重被计算为给定类别标签的属性值的条件概率之和。我们的网络学习程序基于极限学习机;其中首先计算隐藏节点的参数,然后找到连接隐藏节点和输出节点的权重(输出权重)。在某些基准数据集上具有拟议权重的网络结果显示,与传统网络相比,已有改进。

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