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On the Generalization of Incremental Learning RBF Neural Networks trained with Significant Patterns

机译:关于增量学习RBF神经网络的泛化,具有重要模式

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This paper presents some new results on the generalization of incremental learning radial basis function neural networks which are trained with selected significant samples from the input space. Our main focus is to show that we need to pick the right proportion of significant samples from the input space which not only generate an optimal size network but also ensure an acceptable generalization accuracy for an application. Experimental results on these data sets reveal that training with significant patterns of various proportions has greater influence on the generalization ability of the RBF networks.
机译:本文提出了一些新的结果对增量学习的径向基础函数神经网络的概括,这些内部网络培训,这些内容从输入空间接受了选定的显着样本。我们的主要重点是表明我们需要从输入空间中挑选重要样本的正确比例,这不仅不仅产生最佳尺寸网络,而且还可以确保应用程序的可接受的泛化精度。这些数据集的实验结果表明,具有各种比例的显着模式的培训对RBF网络的泛化能力产生了更大的影响。

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