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On the kernel Extreme Learning Machine speedup

机译:关于内核极限学习机的提速

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In this paper, we describe an approximate method for reducing the time and memory complexities of the kernel Extreme Learning Machine variants. We show that, by adopting a Nystrom-based kernel ELM matrix approximation, we can define an ELM space exploiting properties of the kernel ELM space that can be subsequently used to apply several optimization schemes proposed in the literature for ELM network training. The resulted ELM network can achieve good performance, which is comparable to that of its standard kernel ELM counterpart, while overcoming the time and memory restrictions on kernel ELM algorithms that render their application in large-scale learning problems prohibitive. (C) 2015 Elsevier B.V. All rights reserved.
机译:在本文中,我们描述了一种减少内核极限学习机变体的时间和内存复杂性的近似方法。我们表明,通过采用基于Nystrom的内核ELM矩阵逼近,我们可以定义利用内核ELM空间的属性的ELM空间,随后可以将其用于文献中提出的几种用于ELM网络训练的优化方案。最终的ELM网络可以实现良好的性能,可与标准的内核ELM媲美,同时克服了对内核ELM算法的时间和内存的限制,从而限制了它们在大规模学习问题中的应用。 (C)2015 Elsevier B.V.保留所有权利。

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