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Fourier series neural networks for classification

机译:傅里叶系列神经网络分类

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This paper presents classification of linearly separable and non-separable problems using neural networks in which hidden neurons are constructed based on double Fourier series expansions (FSNN). The results of numerical examples including classification problems of logical AND, logical XOR, cows and wolves, as well as 3-category problem such as IRIS classification. All the FSNN results are compared with those obtained from backward propagation neural networks (BPANN) and radial basis function neural networks (RBFNN). Root mean squared errors (RMSE) of the algorithms during the training process are also compared. The classification results obtained from FSNN agree well with those obtained from BPANN and RBFNN. Only a few hidden neurons in FSNNs are required for very good and fast convergence of training as compared with BPANN and RBFNN.
机译:本文介绍了使用基于双傅里叶串联扩展(FSNN)构建隐藏神经元的神经网络的线性可分离和不可分离问题的分类。数值例子的结果包括逻辑且逻辑XOR,牛和狼的分类问题,以及虹膜分类等3类问题。将所有FSNN结果与从向后传播神经网络(BPANN)和径向基函数神经网络(RBFNN)获得的结果进行比较。还比较了训练过程中算法的均方根误差(RMSE)。从FSNN获得的分类结果与来自BPANN和RBFNN获得的那些。与BPANN和RBFNN相比,只有少数FSNNS中的隐藏神经元非常好,培训很快。

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