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Erschienen in: Memetic Computing 2/2017

02.04.2016 | Regular Research Paper

A kernel extreme learning machine algorithm based on improved particle swam optimization

verfasst von: Huijuan Lu, Bangjun Du, Jinyong Liu, Haixia Xia, Wai K. Yeap

Erschienen in: Memetic Computing | Ausgabe 2/2017

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Abstract

Kernel extreme learning machine (KELM) increases the robustness of extreme learning machine (ELM) by turning linearly non-separable data in a low dimensional space into a linearly separable one. However, the internal power parameters of ELM are initialized at random, causing the algorithm to be unstable. In this paper, we use the active operators particle swam optimization algorithm (APSO) to obtain an optimal set of initial parameters for KELM, thus creating an optimal KELM classifier named as APSO-KELM. Experiments on standard genetic datasets show that APSO-KELM has higher classification accuracy when being compared to the existing ELM, KELM, and these algorithms combining PSO/APSO with ELM/KELM, such as PSO-KELM, APSO-ELM, PSO-ELM, etc. Moreover, APSO-KELM has good stability and convergence, and is shown to be a reliable and effective classification algorithm.

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Metadaten
Titel
A kernel extreme learning machine algorithm based on improved particle swam optimization
verfasst von
Huijuan Lu
Bangjun Du
Jinyong Liu
Haixia Xia
Wai K. Yeap
Publikationsdatum
02.04.2016
Verlag
Springer Berlin Heidelberg
Erschienen in
Memetic Computing / Ausgabe 2/2017
Print ISSN: 1865-9284
Elektronische ISSN: 1865-9292
DOI
https://doi.org/10.1007/s12293-016-0182-5

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