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An incremental learning algorithm for the hybrid RBF-BP network classifier

机译:混合RBF-BP网络分类器的增量学习算法

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This paper presents an incremental learning algorithm for the hybrid RBF-BP (ILRBF-BP) network classifier. A potential function is introduced to the training sample space in space mapping stage, and an incremental learning method for the construction of RBF hidden neurons is proposed. The proposed method can incrementally generate RBF hidden neurons and effectively estimate the center and number of RBF hidden neurons by determining the density of different regions in the training sample space. A hybrid RBF-BP network architecture is designed to train the output weights. The output of the original RBF hidden layer is processed and connected with a multilayer perceptron (MLP) network; then, a back propagation (BP) algorithm is used to update the MLP weights. The RBF hidden neurons are used for nonlinear kernel mapping and the BP network is then used for nonlinear classification, which improves classification performance further. The ILRBF-BP algorithm is compared with other algorithms in artificial data sets and UCI data sets, and the experiments demonstrate the superiority of the proposed algorithm.
机译:本文提出了一种用于混合RBF-BP(ILRBF-BP)网络分类器的增量学习算法。在空间映射阶段将潜在函数引入训练样本空间,提出了一种增量学习的RBF隐藏神经元构造方法。通过确定训练样本空间中不同区域的密度,该方法可以逐步生成RBF隐藏神经元,并有效地估计RBF隐藏神经元的中心和数量。设计了一种混合的RBF-BP网络架构来训练输出权重。原始RBF隐藏层的输出经过处理,并与多层感知器(MLP)网络连接;然后,使用反向传播(BP)算法更新MLP权重。 RBF隐藏的神经元用于非线性核映射,然后将BP网络用于非线性分类,这进一步提高了分类性能。在人工数据集和UCI数据集中,将ILRBF-BP算法与其他算法进行了比较,实验证明了该算法的优越性。

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