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An efficient method to construct a radial basis function neural network classifier and its application to unconstrained handwritten digit recognition

机译:一种构造径向基函数神经网络分类器的有效方法及其在无约束手写体数字识别中的应用

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This paper describes a method to construct an RBFN classifier efficiently and effectively. The method determines the middle layer neurons by a fast clustering algorithm, APC-III and computes the optimal weights between the middle and the output layers statistically. The proposed method was applied to an unconstrained handwritten digit recognition. The experiment showed that the method could construct an RBFN classifier fast and the performance of the classifier was as good as the best result previously reported. Our approach presents a good example of the combination of a neural network and a statistical method.
机译:本文描述了一种有效而有效地构造RBFN分类器的方法。该方法通过快速聚类算法APC-III确定中间层神经元,并统计计算中间层和输出层之间的最佳权重。所提出的方法被应用于无约束的手写数字识别。实验表明,该方法可以快速构建RBFN分类器,分类器的性能与先前报道的最佳结果一样好。我们的方法是神经网络和统计方法相结合的一个很好的例子。

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