A Robust AdaBoost.RT Based Ensemble Extreme Learning Machine

Extreme learning machine (ELM) has been well recognized as an effective learning algorithm with extremely fast learning speed and high generalization performance. However, to deal with the regression applications involving big data, the stability and accuracy of ELM shall be further enhanced. In thi...

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Main Authors: Pengbo Zhang, Zhixin Yang
Format: Article
Language:English
Published: Hindawi Limited 2015-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2015/260970
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spelling doaj-a9743a5276a04525bc2b6aec58afd1652020-11-24T22:06:46ZengHindawi LimitedMathematical Problems in Engineering1024-123X1563-51472015-01-01201510.1155/2015/260970260970A Robust AdaBoost.RT Based Ensemble Extreme Learning MachinePengbo Zhang0Zhixin Yang1Department of Electromechanical Engineering, Faculty of Science and Technology, University of Macau, MacauDepartment of Electromechanical Engineering, Faculty of Science and Technology, University of Macau, MacauExtreme learning machine (ELM) has been well recognized as an effective learning algorithm with extremely fast learning speed and high generalization performance. However, to deal with the regression applications involving big data, the stability and accuracy of ELM shall be further enhanced. In this paper, a new hybrid machine learning method called robust AdaBoost.RT based ensemble ELM (RAE-ELM) for regression problems is proposed, which combined ELM with the novel robust AdaBoost.RT algorithm to achieve better approximation accuracy than using only single ELM network. The robust threshold for each weak learner will be adaptive according to the weak learner’s performance on the corresponding problem dataset. Therefore, RAE-ELM could output the final hypotheses in optimally weighted ensemble of weak learners. On the other hand, ELM is a quick learner with high regression performance, which makes it a good candidate of “weak” learners. We prove that the empirical error of the RAE-ELM is within a significantly superior bound. The experimental verification has shown that the proposed RAE-ELM outperforms other state-of-the-art algorithms on many real-world regression problems.http://dx.doi.org/10.1155/2015/260970
collection DOAJ
language English
format Article
sources DOAJ
author Pengbo Zhang
Zhixin Yang
spellingShingle Pengbo Zhang
Zhixin Yang
A Robust AdaBoost.RT Based Ensemble Extreme Learning Machine
Mathematical Problems in Engineering
author_facet Pengbo Zhang
Zhixin Yang
author_sort Pengbo Zhang
title A Robust AdaBoost.RT Based Ensemble Extreme Learning Machine
title_short A Robust AdaBoost.RT Based Ensemble Extreme Learning Machine
title_full A Robust AdaBoost.RT Based Ensemble Extreme Learning Machine
title_fullStr A Robust AdaBoost.RT Based Ensemble Extreme Learning Machine
title_full_unstemmed A Robust AdaBoost.RT Based Ensemble Extreme Learning Machine
title_sort robust adaboost.rt based ensemble extreme learning machine
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1024-123X
1563-5147
publishDate 2015-01-01
description Extreme learning machine (ELM) has been well recognized as an effective learning algorithm with extremely fast learning speed and high generalization performance. However, to deal with the regression applications involving big data, the stability and accuracy of ELM shall be further enhanced. In this paper, a new hybrid machine learning method called robust AdaBoost.RT based ensemble ELM (RAE-ELM) for regression problems is proposed, which combined ELM with the novel robust AdaBoost.RT algorithm to achieve better approximation accuracy than using only single ELM network. The robust threshold for each weak learner will be adaptive according to the weak learner’s performance on the corresponding problem dataset. Therefore, RAE-ELM could output the final hypotheses in optimally weighted ensemble of weak learners. On the other hand, ELM is a quick learner with high regression performance, which makes it a good candidate of “weak” learners. We prove that the empirical error of the RAE-ELM is within a significantly superior bound. The experimental verification has shown that the proposed RAE-ELM outperforms other state-of-the-art algorithms on many real-world regression problems.
url http://dx.doi.org/10.1155/2015/260970
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