首页> 外文会议>International Conference on Intelligent Computing(ICIC 2006); 20060816-19; Kunming(CN) >A Fast Robust Learning Algorithm for RBF Network Against Outliers
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A Fast Robust Learning Algorithm for RBF Network Against Outliers

机译:RBF网络中针对异常值的快速鲁棒学习算法

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摘要

Training data set often contains outliers, which can cause substantial deterioration of the approximation realized by a neural network. In this paper, a fast robust learning algorithm against outliers for RBF network is presented. The algorithm uses the subtractive cluster-ing(SC) method to select hidden node centers of RBF network, and the gradient descent method with the scaled robust loss function(SRLF) as the objective function to adjust hidden node widths and the connection weights of the network. Therefore, the learning of RBF network has robustness on dealing with outliers and fast rate of convergence. The experimental results show the advantages of the learning algorithm over traditional learning algorithms for RBF network.
机译:训练数据集通常包含离群值,这可能导致神经网络实现的逼近度大幅下降。本文提出了一种针对RBF网络的针对异常值的快速鲁棒学习算法。该算法采用减法聚类(SC)法选择RBF网络的隐节点中心,并采用缩放鲁棒损失函数(SRLF)为目标函数的梯度下降法来调整隐节点的隐节点宽度和连接权重。网络。因此,RBF网络的学习在处理异常值和快速收敛方面具有鲁棒性。实验结果表明,与传统的RBF网络学习算法相比,该学习算法具有优势。

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