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Sparse extreme learning machine classifier exploiting intrinsic graphs

机译:利用内在图的稀疏极限学习机分类器

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摘要

This paper presents an analysis of the recently proposed sparse extreme learning machine (S-ELM) classifier and describes an optimization scheme that can be used to calculate the network output weights. This optimization scheme exploits intrinsic graph structures in order to describe geometric data relationships in the so-called ELM space. Kernel formulations of the approach operating in ELM spaces of arbitrary dimensions are also provided. It is shown that the application of the optimization scheme exploiting geometric data relationships in the original ELM space is equivalent to the application of the original S-ELM to a transformed ELM space. The experimental results show that the incorporation of geometric data relationships in S-ELM can lead to enhanced performance. (C) 2015 Elsevier B.V. All rights reserved.
机译:本文对最近提出的稀疏极限学习机(S-ELM)分类器进行了分析,并描述了可用于计算网络输出权重的优化方案。该优化方案利用内在图结构来描述所谓的ELM空间中的几何数据关系。还提供了在任意尺寸的ELM空间中运行的方法的内核公式。结果表明,在原始ELM空间中利用几何数据关系的优化方案的应用等效于将原始S-ELM应用于转换后的ELM空间。实验结果表明,将几何数据关系合并到S-ELM中可以提高性能。 (C)2015 Elsevier B.V.保留所有权利。

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