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On the training of artificial neural networks with radial basis function using optimum-path forest clustering

机译:基于最优路径森林聚类的具有径向基函数的人工神经网络训练

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摘要

In this paper, we show how to improve the Radial Basis Function Neural Networks effectiveness by using the Optimum-Path Forest clustering algorithm, since it computes the number of clusters on-the-fly, which can be very interesting for finding the Gaussians that cover the feature space. Some commonly used approaches for this task, such as the well known k-means, require the number of classes/clusters previous its performance. Although the number of classes is known in supervised applications, the real number of clusters is extremely hard to figure out, since one class may be represented by more than one cluster. Experiments over 9 datasets together with statistical analysis have shown the suitability of OPF clustering for the RBF training step.
机译:在本文中,我们展示了如何使用“最优路径森林”聚类算法来提高径向基函数神经网络的效率,因为它可以实时计算聚类的数量,这对于寻找涵盖特征空间。一些常用的方法(例如众所周知的k均值)需要先执行其性能的类/集群数。尽管在受监管的应用程序中类的数目是已知的,但是由于一个类可能由一个以上的簇表示,因此很难弄清群集的实际数目。超过9个数据集的实验以及统计分析表明,OPF聚类适合RBF训练步骤。

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