首页> 外文会议>Annual German Conference on Artificial Intelligence(KI 2005); 20050911-14; Koblenz(DE) >Neuro-Fuzzy Kolmogorov's Network for Time Series Prediction and Pattern Classification
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Neuro-Fuzzy Kolmogorov's Network for Time Series Prediction and Pattern Classification

机译:时序预测和模式分类的神经模糊Kolmogorov网络

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摘要

In the paper, a novel Neuro-Fuzzy Kolmogorov's Network (NFKN) is considered. The NFKN is based on and is the development of the previously proposed neural and fuzzy systems using the famous Kolmogorov's superposition theorem (KST). The network consists of two layers of neo-fuzzy neurons (NFNs) and is linear in both the hidden and output layer parameters, so it can be trained with very fast and simple procedures: the gradient-descent based learning rule for the hidden layer, and the recursive least squares algorithm for the output layer. The validity of theoretical results and the advantages of the NFKN are confirmed by experiments.
机译:在本文中,考虑了一种新型的神经模糊Kolmogorov网络(NFKN)。 NFKN基于先前提出的神经和模糊系统,并使用著名的Kolmogorov叠加定理(KST)进行开发。该网络由两层新模糊神经元(NFN)组成,并且在隐藏层和输出层参数上都是线性的,因此可以通过非常快速和简单的过程对其进行训练:基于梯度下降的隐藏层学习规则,以及输出层的递归最小二乘算法。实验证明了理论结果的有效性和NFKN的优势。

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