Ensemble of M5 Model Tree Based Modelling of Sodium Adsorption Ratio

This work reports the results of four ensemble approaches with the M5 model tree as the base regression model to anticipate Sodium Adsorption Ratio (SAR). Ensemble methods that combine the output of multiple regression models have been found to be more accurate than any of the individual models maki...

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Main Authors: M. T. Sattari, M. Pal, R. Mirabbasi, J. Abraham
Format: Article
Language:English
Published: Shahrood University of Technology 2018-03-01
Series:Journal of Artificial Intelligence and Data Mining
Subjects:
Online Access:http://jad.shahroodut.ac.ir/article_1015_957fdfdc9de0cc89dbb4339ccf806dc4.pdf
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spelling doaj-a922ab2e3e7e40e5a8dafb809e692a2f2020-11-25T01:33:49ZengShahrood University of TechnologyJournal of Artificial Intelligence and Data Mining2322-52112322-44442018-03-0161697810.22044/jadm.2017.5540.16631015Ensemble of M5 Model Tree Based Modelling of Sodium Adsorption RatioM. T. Sattari0M. Pal1R. Mirabbasi2J. Abraham3Department of Water Engineering, Agriculture Faculty, University of Tabriz, Tabriz, Iran.Department of Civil Engineering, National Institute of Technology, Kurukshetra, 136119, Haryana, India.Department of Water Engineering, Agriculture Faculty, University of Shahrekord, Shahrekord, Iran.University of St. Thomas, School of Engineering, 2115 Summit Ave, St. Paul, MN 55105-1079, USA.This work reports the results of four ensemble approaches with the M5 model tree as the base regression model to anticipate Sodium Adsorption Ratio (SAR). Ensemble methods that combine the output of multiple regression models have been found to be more accurate than any of the individual models making up the ensemble. In this study additive boosting, bagging, rotation forest and random subspace methods are used. The dataset, which consisted of 488 samples with nine input parameters were obtained from the Barandoozchay River in West Azerbaijan province, Iran. Three evaluation criteria: correlation coefficient, root mean square error and mean absolute error were used to judge the accuracy of different ensemble models. In addition to the use of M5 model tree to predict the SAR values, a wrapper-based variable selection approach using a M5 model tree as the learning algorithm and a genetic algorithm, was also used to select useful input variables. The encouraging performance motivates the use of this technique to predict SAR values.http://jad.shahroodut.ac.ir/article_1015_957fdfdc9de0cc89dbb4339ccf806dc4.pdfSodium Adsorption Ratio (SAR)data miningM5 model treeGenetic algorithmWrapper Approach
collection DOAJ
language English
format Article
sources DOAJ
author M. T. Sattari
M. Pal
R. Mirabbasi
J. Abraham
spellingShingle M. T. Sattari
M. Pal
R. Mirabbasi
J. Abraham
Ensemble of M5 Model Tree Based Modelling of Sodium Adsorption Ratio
Journal of Artificial Intelligence and Data Mining
Sodium Adsorption Ratio (SAR)
data mining
M5 model tree
Genetic algorithm
Wrapper Approach
author_facet M. T. Sattari
M. Pal
R. Mirabbasi
J. Abraham
author_sort M. T. Sattari
title Ensemble of M5 Model Tree Based Modelling of Sodium Adsorption Ratio
title_short Ensemble of M5 Model Tree Based Modelling of Sodium Adsorption Ratio
title_full Ensemble of M5 Model Tree Based Modelling of Sodium Adsorption Ratio
title_fullStr Ensemble of M5 Model Tree Based Modelling of Sodium Adsorption Ratio
title_full_unstemmed Ensemble of M5 Model Tree Based Modelling of Sodium Adsorption Ratio
title_sort ensemble of m5 model tree based modelling of sodium adsorption ratio
publisher Shahrood University of Technology
series Journal of Artificial Intelligence and Data Mining
issn 2322-5211
2322-4444
publishDate 2018-03-01
description This work reports the results of four ensemble approaches with the M5 model tree as the base regression model to anticipate Sodium Adsorption Ratio (SAR). Ensemble methods that combine the output of multiple regression models have been found to be more accurate than any of the individual models making up the ensemble. In this study additive boosting, bagging, rotation forest and random subspace methods are used. The dataset, which consisted of 488 samples with nine input parameters were obtained from the Barandoozchay River in West Azerbaijan province, Iran. Three evaluation criteria: correlation coefficient, root mean square error and mean absolute error were used to judge the accuracy of different ensemble models. In addition to the use of M5 model tree to predict the SAR values, a wrapper-based variable selection approach using a M5 model tree as the learning algorithm and a genetic algorithm, was also used to select useful input variables. The encouraging performance motivates the use of this technique to predict SAR values.
topic Sodium Adsorption Ratio (SAR)
data mining
M5 model tree
Genetic algorithm
Wrapper Approach
url http://jad.shahroodut.ac.ir/article_1015_957fdfdc9de0cc89dbb4339ccf806dc4.pdf
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AT rmirabbasi ensembleofm5modeltreebasedmodellingofsodiumadsorptionratio
AT jabraham ensembleofm5modeltreebasedmodellingofsodiumadsorptionratio
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