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A novel self-adaptive extreme learning machine based on affinity propagation for radial basis function neural network

机译:径向基函数神经网络的基于亲和力传播的新型自适应极限学习机

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摘要

In this paper, a novel self-adaptive extreme learning machine (ELM) based on affinity propagation (AP) is proposed to optimize the radial basis function neural network (RBFNN). As is well known, the parameters of original ELM which developed by G.-B. Huang are randomly determined. However, that cannot objectively obtain a set of optimal parameters of RBFNN trained by ELM algorithm for different realistic datasets. The AP algorithm can automatically produce a set of clustering centers for the different datasets. According to the results of AP, we can, respectively, get the cluster number and the radius value of each cluster. In that case, the above cluster number and radius value can be used to initialize the number and widths of hidden layer neurons in RBFNN and that is also the parameters of coefficient matrix H of ELM. This may successfully avoid the subjectivity prior knowledge and randomness of training RBFNN. Experimental results show that the method proposed in this thesis has a more powerful generalization capability than conventional ELM for an RBFNN.
机译:本文提出了一种基于亲和力传播(AP)的新型自适应极端学习机(ELM),以优化径向基函数神经网络(RBFNN)。众所周知,由G.-B开发的原始ELM的参数。黄是随机确定的。然而,这不能客观地获得由ELM算法训练的针对不同现实数据集的RBFNN最优参数集。 AP算法可以为不同的数据集自动生成一组聚类中心。根据AP的结果,我们可以分别获得每个簇的簇数和半径值。在这种情况下,上述簇数和半径值可用于初始化RBFNN中隐层神经元的数目和宽度,这也是ELM系数矩阵H的参数。这可以成功地避免主观先验知识和训练RBFNN的随机性。实验结果表明,本文提出的方法对RBFNN具有比常规ELM强大的泛化能力。

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