3.8 Article

A Novel Extreme Learning Machine Based on Hybrid Kernel Function

Journal

JOURNAL OF COMPUTERS
Volume 8, Issue 8, Pages 2110-2117

Publisher

ACAD PUBL
DOI: 10.4304/jcp.8.8.2110-2117

Keywords

Hybrid Kernel Function; Extreme Learning Machine; Global Kernel Function; Local Kernel Function

Funding

  1. National Key Basic Research Program of China [2013CB329502]
  2. National Natural Science Foundation of China [41074003]
  3. Opening Foundation of the Key Laboratory of Intelligent Information Processing of Chinese Academy of Sciences [IIP2010-1]
  4. Opening Foundation of Beijing Key Laboratory of Intelligent Telecommunications Software and Multimedia, Beijing University of Posts and Telecommunications

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Extreme learning machine is a new learning algorithm for the single hidden layer feedforward neural networks (SLFNs). ELM has been widely used in various fields and applications to overcome the slow training speed and over-fitting problems of the conventional neural network learning algorithms. ELM algorithm is based on the empirical risk minimization, without considering the structural risk and this may lead to over-fitting problems and at the same time, it is with poor controllability and robustness. For these deficiencies, an optimization method is proposed in this paper, a novel extreme learning machine based on hybrid kernel function (HKELM). The method constructs a hybrid kernel function with better performance by fully combining local kernel function strong learning ability and global kernel function strong generalization ability. Compared with traditional ELM, the results show that this method can effectively improve the ELM classification results, avoid local minimum, with better generalization, robustness, controllability and faster learning rate.

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