Faster RBF Network Learning Utilizing Singular Regions

Seiya Satoh, R. Nakano
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Abstract

There are two ways to learn radial basis function (RBF) networks: one-stage and two-stage learnings. Recently a very powerful one-stage learning method called RBF-SSF has been proposed, which can stably find a series of excellent solutions, making good use of singular regions, and can monotonically decrease training error along with the increase of hidden units. RBF-SSF was built by applying the SSF (singularity stairs following) paradigm to RBF networks; the SSF paradigm was originally and successfully proposed for multilayer perceptrons. Although RBF-SSF has the strong capability to find excellent solutions, it required a lot of time mainly because it computes the Hessian. This paper proposes a faster version of RBF-SSF called RBF-SSF(pH) by introducing partial calculation of the Hessian. The experiments using two datasets showed RBF-SSF(pH) ran as fast as usual one-stage learning methods while keeping the excellent solution quality.
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利用奇异区域实现更快的RBF网络学习
径向基函数(RBF)网络有两种学习方法:一阶段学习和两阶段学习。最近提出了一种非常强大的单阶段学习方法RBF-SSF,它可以稳定地找到一系列优秀的解,很好地利用了奇异区域,并且可以随着隐藏单元的增加单调地减少训练误差。将SSF (singularity stairs following)模型应用于RBF网络,构建了RBF-SSF;SSF范式最初是针对多层感知器成功提出的。虽然RBF-SSF具有很强的寻找优秀解的能力,但主要是因为它需要计算Hessian,所以需要大量的时间。本文通过引入Hessian的部分计算,提出了一种更快的RBF-SSF,称为RBF-SSF(pH)。使用两个数据集的实验表明,RBF-SSF(pH)的运行速度与通常的单阶段学习方法一样快,同时保持了优异的解决方案质量。
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