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Distance Based Multiple Kernel ELM: A Fast Multiple Kernel Learning Approach

机译:基于距离的多核ELM:一种快速的多核学习方法

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We propose a distance based multiple kernel extreme learning machine (DBMK-ELM), which provides a two-stage multiple kernel learning approach with high efficiency. Specifically, DBMK-ELM first projects multiple kernels into a new space, in which new instances are reconstructed based on the distance of different sample labels. Subsequently, anl2-norm regularization least square, in which the normal vector corresponds to the kernel weights of a new kernel, is trained based on these new instances. After that, the new kernel is utilized to train and test extreme learning machine (ELM). Extensive experimental results demonstrate the superior performance of the proposed DBMK-ELM in terms of the accuracy and the computational cost.
机译:我们提出了一种基于距离的多核极限学习机(DBMK-ELM),它提供了一种高效的两阶段多核学习方法。具体来说,DBMK-ELM首先将多个内核投影到一个新空间中,在该空间中,将根据不同样本标签的距离来重建新实例。随后,基于这些新实例训练其中的法向矢量对应于新内核的内核权重的an2-norm正则化最小二乘。之后,新内核将用于训练和测试极限学习机(ELM)。大量的实验结果证明了所提出的DBMK-ELM在精度和计算成本方面的优越性能。

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