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A Novel Sparse Extreme Learning Machine based Classifier

机译:一种新型稀疏的极限学习机基于分类器

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Compared to traditional classifiers, such as SVM, the extreme learning machine (ELM) achieves similar performance for classification and runs at a much faster learning speed. However, the solution of ELM is dense and plenty of storage space and training time are required for large-scale applications. Traditional ELM method learns the output weights through the calculation of matrix inverse. In this paper, we propose a sparse ELM (SELM) method and the sparsity of output weights can reduce the storage space and training time. Furthermore, SELM updates the output weights through the proximal gradient descent method, which runs faster than the calculation of matrix inverse. Compared with ELM and SVM, SELM obtains better performance with much faster training speed and higher testing accuracy.
机译:与传统的分类器相比,如SVM,极端学习机(ELM)实现了类似的分类性能,并以更快的学习速度运行。然而,榆树的解决方案是密集的,大规模应用需要大量的存储空间和训练时间。传统的ELM方法通过计算矩阵逆的计算来学习输出权重。在本文中,我们提出了一种稀疏的ELM(SELM)方法,输出权重的稀疏性可以减少存储空间和训练时间。此外,SELM通过近端梯度下降方法更新输出权重,其比矩阵逆的计算更快。与ELM和SVM相比,SELM以更快的训练速度和更高的测试精度获得更好的性能。

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