基于径向基函数神经网络和正则化网络的监督学习误差

Roman Neruda, P. Vidnerová
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引用次数: 2

摘要

正则化理论的理论结果与正则化衍生网络(RN)的实际适用性之间存在差距。另一方面,径向基函数网络(RBF)作为正则化网络的一种特例,具有丰富的学习算法选择。在这项工作中,我们研究了rnn和RBF之间的关系,并证明了rnn的理论估计适用于应用于实际数据的具体RBF。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Supervised Learning Errors by Radial Basis Function Neural Networks and Regularization Networks
There is a gap between the theoretical results of regularization theory and practical suitability of regularization-derived networks (RN). On the other hand, radial basis function networks (RBF) that can be seen as a special case of regularization networks, have a rich selection of learning algorithms. In this work we study a relationship between RN and RBF, and show that theoretical estimates for RN hold for a concrete RBF applied on real-world data.
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