Multi-label classification with extreme learning machine

Yanika Kongsorot, Punyaphol Horata
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引用次数: 18

Abstract

Extreme learning machine (ELM) is a well-known algorithm for single layer feedforward neural networks (SLFNs) and their learning speed is faster than traditional gradient-based neural networks. However, many of the tasks that ELM focuses on are single-label, where an instance of the input set is associated with one label. This paper proposes a new method for training ELM that will be capable of multi-label classification using the Canonical Correlation Analysis (CCA). The new method is named CCA-ELM. There are 4 steps in the training process: the first step is to compute any correlations between the input features and the set of labels using CCA, the second step maps the input space and label space to the new space, the third step uses ELM to classify and the last step is to map to the original input space. The experimental results show that CCA-ELM can improve ELM for classification on multi-label learning and its recognition performances are better than the other comparative algorithms that use the same standard CCA.
基于极限学习机的多标签分类
极限学习机(ELM)是单层前馈神经网络(SLFNs)的一种知名算法,它的学习速度比传统的基于梯度的神经网络快。然而,ELM关注的许多任务是单标签的,其中输入集的实例与一个标签相关联。本文提出了一种利用典型相关分析(Canonical Correlation Analysis, CCA)训练具有多标签分类能力的ELM的新方法。新方法被命名为CCA-ELM。训练过程有4个步骤:第一步是使用CCA计算输入特征与标签集之间的任何相关性,第二步是将输入空间和标签空间映射到新的空间,第三步是使用ELM进行分类,最后一步是映射到原始输入空间。实验结果表明,CCA-ELM可以改进ELM在多标签学习下的分类效果,其识别性能优于其他使用相同标准CCA的比较算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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