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Determination of the complexity fitted model structure of Radial Basis Function Neural Networks

机译:径向基函数神经网络的复杂度拟合模型结构的确定

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One of the disadvantages of using Artificial Neural Networks (ANNs) is their significant training time need, which scales with the complexity of the network and with the complexity of the problem that is needed to be solved. Radial Basis Function Neural Networks (RBFNNs) are neural networks that use the linear combination of radial basis functions, utilizing hybrid learning procedures which can solve the time requirement problem efficiently. However, it is not trivial to determine their structural parameters, such as the number of neurons as well as the parameters of each neuron. To solve that problem we have developed a new training method: we apply a clustering step to the training data, which results in information both about the quasi-optimum number of necessary neurons in the model and the approximate parameters of the neurons.
机译:使用人工神经网络(ANN)的缺点之一是其大量的培训时间需求,这与网络的复杂性以及需要解决的问题的复杂性成比例。径向基函数神经网络(RBFNN)是使用径向基函数的线性组合的神经网络,利用混合学习程序可以有效解决时间需求问题。但是,确定它们的结构参数(例如神经元的数量以及每个神经元的参数)并非易事。为了解决该问题,我们开发了一种新的训练方法:我们对训练数据应用聚类步骤,从而获得有关模型中所需神经元的准最佳数量和神经元的近似参数的信息。

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