A Constrained Optimization based Extreme Learning Machine for noisy data regression

Artificial intelligence; Benchmarking; Data handling; Knowledge acquisition; Lagrange multipliers; Learning systems; Optimization; Regression analysis; Benchmark data; Constrained optimization methods; Data regression; Extreme learning machine; Kernel function; Noisy data; Optimization problems; Sup...

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Main Authors: Yuong Wong S., Siah Yap K., Jen Yap H.
Other Authors: 55812054100
Format: Article
Published: Elsevier 2023
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Institution: Universiti Tenaga Nasional
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spelling my.uniten.dspace-230062023-05-29T14:14:06Z A Constrained Optimization based Extreme Learning Machine for noisy data regression Yuong Wong S. Siah Yap K. Jen Yap H. 55812054100 24448864400 35319362200 Artificial intelligence; Benchmarking; Data handling; Knowledge acquisition; Lagrange multipliers; Learning systems; Optimization; Regression analysis; Benchmark data; Constrained optimization methods; Data regression; Extreme learning machine; Kernel function; Noisy data; Optimization problems; Support vector regression (SVR); Constrained optimization; nitric oxide; algorithm; Article; artificial intelligence; artificial neural network; classifier; combustion; entropy; exhaust gas; extreme learning machine; fuzzy system; generalized regression neural network; generalized regression neural network and fuzzy art; housing; kernel method; logistic regression analysis; machine learning; Malaysia; priority journal; probabilitistic entropy based neural network; process optimization; radial based function; regression analysis; support vector machine Most of the existing Artificial Intelligence (AI) models for data regression commonly assume that the data samples are completely clean without noise or worst yet, only the symmetrical noise is in considerations. However in the real world applications, this is often not the case. This paper addresses a significant note of inefficiency in methods for regression when dealing with outliers, especially for cases with polarity of noise involved (i.e., one sided noise with either only positive noise or negative noise). Using soft margin loss function concept, we propose Constrained Optimization method based Extreme Learning Machine for Regression, hereafter denoted as CO-ELM-R. The proposed method incorporates the two Lagrange multipliers that mimic Support Vector Regression (SVR) into the basis of ELM to cope with infeasible constraints of the regression optimization problem. Thus, CO-ELM-R will complement the recursive iterations of SVR in the training phase due to the fact that ELM is much simpler in structure and faster in implementation. The proposed CO-ELM-R is evaluated empirically on a few benchmark data sets and a real world application of NO. x gas emission data set collected from one of the power plant in Malaysia. The obtained results have demonstrated its validity and efficacy in handling noisy data regression problems. � 2015 Elsevier B.V. Final 2023-05-29T06:14:06Z 2023-05-29T06:14:06Z 2016 Article 10.1016/j.neucom.2015.07.065 2-s2.0-84944463466 https://www.scopus.com/inward/record.uri?eid=2-s2.0-84944463466&doi=10.1016%2fj.neucom.2015.07.065&partnerID=40&md5=a0d84d6f5a1df2b69bfc1cc373100ee3 https://irepository.uniten.edu.my/handle/123456789/23006 171 1431 1443 Elsevier Scopus
institution Universiti Tenaga Nasional
building UNITEN Library
collection Institutional Repository
continent Asia
country Malaysia
content_provider Universiti Tenaga Nasional
content_source UNITEN Institutional Repository
url_provider http://dspace.uniten.edu.my/
description Artificial intelligence; Benchmarking; Data handling; Knowledge acquisition; Lagrange multipliers; Learning systems; Optimization; Regression analysis; Benchmark data; Constrained optimization methods; Data regression; Extreme learning machine; Kernel function; Noisy data; Optimization problems; Support vector regression (SVR); Constrained optimization; nitric oxide; algorithm; Article; artificial intelligence; artificial neural network; classifier; combustion; entropy; exhaust gas; extreme learning machine; fuzzy system; generalized regression neural network; generalized regression neural network and fuzzy art; housing; kernel method; logistic regression analysis; machine learning; Malaysia; priority journal; probabilitistic entropy based neural network; process optimization; radial based function; regression analysis; support vector machine
author2 55812054100
author_facet 55812054100
Yuong Wong S.
Siah Yap K.
Jen Yap H.
format Article
author Yuong Wong S.
Siah Yap K.
Jen Yap H.
spellingShingle Yuong Wong S.
Siah Yap K.
Jen Yap H.
A Constrained Optimization based Extreme Learning Machine for noisy data regression
author_sort Yuong Wong S.
title A Constrained Optimization based Extreme Learning Machine for noisy data regression
title_short A Constrained Optimization based Extreme Learning Machine for noisy data regression
title_full A Constrained Optimization based Extreme Learning Machine for noisy data regression
title_fullStr A Constrained Optimization based Extreme Learning Machine for noisy data regression
title_full_unstemmed A Constrained Optimization based Extreme Learning Machine for noisy data regression
title_sort constrained optimization based extreme learning machine for noisy data regression
publisher Elsevier
publishDate 2023
_version_ 1806423995351826432