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Ordinal extreme learning machine

机译:序数极限学习机

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摘要

Recently, a new fast learning algorithm called Extreme Learning Machine (ELM) has been developed for Single-Hidden Layer Feedforward Networks (SLFNs) in G.-B. Huang, Q.-Y. Zhu and C.-K. Siew "[Extreme learning machine: theory and applications," Neurocomputing 70 (2006) 489-501). And, ELM has been successfully applied to many classification and regression problems. In this paper, the ELM algorithm is further studied for ordinal regression problems (named ORELM). We firstly proposed an encoding-based framework for ordinal regression which includes three encoding schemes: single multi-output classifier, multiple binary-classifications with one-against-all (OAA) decomposition method and one-against-one (OAO) method. Then, the SLFN was redesigned for ordinal regression problems based on the proposed framework and the algorithms are trained by the extreme learning machine in which input weights are assigned randomly and output weights can be decided analytically. Lastly widely experiments on three kinds of datasets were carried to test the proposed algorithm. The comparative results with such traditional methods as Gaussian Process for Ordinal Regression (ORGP) and Support Vector for Ordinal Regression (ORSVM) show that ORELM can obtain extremely rapid training speed and good generalization ability. Especially when the data set's scalability increases, the advantage of ORELM will become more apparent. Additionally, ORELM has the following advantages, including the capabilities of learning in both online and batch modes and handling non-linear data.
机译:最近,已经为G.-B中的单隐藏层前馈网络(SLFN)开发了一种称为极限学习机(ELM)的新的快速学习算法。黄清仪朱和C.K. Siew“ [极端学习机:理论和应用,” Neurocomputing 70(2006)489-501)。并且,ELM已成功应用于许多分类和回归问题。在本文中,对有序回归问题(称为ORELM)进一步研究了ELM算法。我们首先提出了一种基于编码的序数回归框架,该框架包括三种编码方案:单个多输出分类器,具有一对一(OAA)分解方法和一对一(OAO)方法的多个二进制分类。然后,在提出的框架的基础上,针对序数回归问题对SLFN进行了重新设计,并通过极限学习机对算法进行了训练,其中随机分配了输入权重,并且可以通过分析确定输出权重。最后,对三种数据集进行了广泛的实验,以测试该算法。与高斯序数回归高斯过程(ORGP)和序数回归支持向量(ORSVM)等传统方法的比较结果表明,ORELM可以获得极快的训练速度和良好的泛化能力。特别是当数据集的可伸缩性增加时,ORELM的优势将变得更加明显。此外,ORELM具有以下优点,包括在线和批处理模式下的学习能力以及处理非线性数据的能力。

著录项

  • 来源
    《Neurocomputing》 |2010年第3期|p.447-456|共10页
  • 作者单位

    MOE KLINNS Lab & SKLMS Lab. Department of Computer Science, Xi'an Jiaotong University, 710049, China ,Xi'an Institute of Post & Telecommunications, 710121, China;

    MOE KLINNS Lab & SKLMS Lab. Department of Computer Science, Xi'an Jiaotong University, 710049, China;

    France Telecom R&D (Orange Labs), Beijing, China;

    Xi'an Institute of Post & Telecommunications, 710121, China;

    MOE KLINNS Lab & SKLMS Lab. Department of Computer Science, Xi'an Jiaotong University, 710049, China;

  • 收录信息 美国《科学引文索引》(SCI);美国《工程索引》(EI);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

    ordinal regression; extreme learning machine; error correcting output codes;

    机译:序数回归极限学习机;纠错输出代码;
  • 入库时间 2022-08-18 02:08:27

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