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A Fast Learning Complex-valued Neural Classifier for real-valued classification problems

机译:一个快速学习复合价值的神经分类器,用于实值分类问题

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This paper presents a fast learning fully complex-valued classifier to solve real-valued classification problems, called the ‘Fast Learning Complex-valued Neural Classifier’ (FLCNC). The FLCNC is a single hidden layer network with a non-linear, real to complex transformed input layer, a hidden layer with a fully complex activation function and a linear output layer. The neurons in the input layer convert the real-valued input features to the Complex domain using an unique non-linear transformation. At the hidden layer, the complex-valued transformed input features are mapped onto a higher dimensional Complex plane using a fully complex-valued activation function of the type of ‘sech’. The parameters of the input and hidden neurons of the FLCNC are chosen randomly and the output parameters are estimated analytically which makes the FLCNC to perform fast classification. Moreover, the unique nonlinear input transformation and the orthogonal decision boundaries of the complex-valued neural network help the FLCNC to perform accurate classification. Performance of the FLCNC is demonstrated using a set of multi-category and binary real valued classification problems with both balanced and unbalanced data sets from the UCI machine learning repository. Performance comparison with existing complex-valued and real-valued classifiers show the superior classification performance of the FLCNC.
机译:本文介绍了一个快速学习完全复杂的分类器,可以解决实际值的分类问题,称为“快速学习复合性神经分类器”(FLCNC)。 FLCNC是一个单独的隐藏层网络,具有非线性实际,复杂变换输入层,具有完全复杂的激活功能和线性输出层的隐藏层。输入层中的神经元使用独特的非线性变换将实值输入特征转换为复杂域。在隐藏层,使用“SECH”类型的完全复合值的激活功能,将复值变化的转换输入特征映射到更高维复杂平面上。随机选择FLCNC的输入和隐藏神经元的参数,并且分析地估计输出参数,这使得FLCNC执行快速分类。此外,复值神经网络的独特非线性输入变换和正交决策边界有助于FLCNC执行准确的分类。使用来自UCI机器学习存储库的平衡和不平衡数据集的一组多类别和二进制实值分类问题来证明FLCNC的性能。与现有复合值和实值分类器的性能比较显示了FLCNC的卓越分类性能。

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