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首页> 外文期刊>International journal of machine learning and cybernetics >On optimization based extreme learning machine in primal for regression and classification by functional iterative method
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On optimization based extreme learning machine in primal for regression and classification by functional iterative method

机译:基于迭代的基于优化的极限学习机的回归与分类

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摘要

In this paper, the recently proposed extreme learning machine in the aspect of optimization method by Huang et al. (Neurocomputing, 74: 155-163, 2010) has been considered in its primal form whose solution is obtained by solving an absolute value equation problem by a simple, functional iterative algorithm. It has been proved under sufficient conditions that the algorithm converges linearly. The pseudo codes of the algorithm for regression and classification are given and they can be easily implemented in MATLAB. Experiments were performed on a number of real-world datasets using additive and radial basis function hidden nodes. Similar or better generalization performance of the proposed method in comparison to support vector machine (SVM), extreme learning machine (ELM), optimally pruned extreme learning machine (OP-ELM) and optimization based extreme learning machine (OB-ELM) methods with faster learning speed than SVM and OB-ELM demonstrates its effectiveness and usefulness.
机译:本文从Huang等人的优化方法角度提出了最近提出的极限学习机。 (Neurocomputing,74:155-163,2010)已经以其原始形式被考虑,其解决方案是通过使用简单的,功能迭代算法来求解绝对值方程问题而获得的。证明了在足够条件下该算法是线性收敛的。给出了回归和分类算法的伪代码,可以在MATLAB中轻松实现。使用加性和径向基函数隐藏节点对许多真实世界的数据集进行了实验。与支持向量机(SVM),极限学习机(ELM),最优修剪的极限学习机(OP-ELM)和基于优化的极限学习机(OB-ELM)方法相比,该方法的相似性或更好的泛化性能学习速度比SVM和OB-ELM证明了其有效性和实用性。

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