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Growing radial basis neural networks: merging supervised and unsupervised learning with network growth techniques

机译:不断发展的径向基神经网络:将有监督和无监督学习与网络增长技术相结合

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摘要

This paper proposes a framework for constructing and training radial basis function (RBF) neural networks. The proposed growing radial basis function (GRBF) network begins with a small number of prototypes, which determine the locations of radial basis functions. In the process of training, the GRBF network gross by splitting one of the prototypes at each growing cycle. Two splitting criteria are proposed to determine which prototype to split in each growing cycle. The proposed hybrid learning scheme provides a framework for incorporating existing algorithms in the training of GRBF networks. These include unsupervised algorithms for clustering and learning vector quantization, as well as learning algorithms for training single-layer linear neural networks. A supervised learning scheme based on the minimization of the localized class-conditional variance is also proposed and tested. GRBF neural networks are evaluated and tested on a variety of data sets with very satisfactory results.
机译:本文提出了一个用于构建和训练径向基函数(RBF)神经网络的框架。所提出的不断增长的径向基函数(GRBF)网络始于少数原型,这些原型确定了径向基函数的位置。在培训过程中,GRBF网络通过在每个生长周期拆分一个原型来进行粗化。提出了两种分裂准则,以确定在每个生长周期中分裂哪种原型。提出的混合学习方案提供了一个框架,用于将现有算法纳入GRBF网络的训练中。这些包括用于聚类和学习矢量量化的无监督算法,以及用于训练单层线性神经网络的学习算法。还提出并测试了基于最小化局部类条件方差的监督学习方案。 GRBF神经网络在各种数据集上进行了评估和测试,结果非常令人满意。

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