Optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the Arctic

The challenging oil spill response in the Arctic calls for effective response decision support tools. In this study, a framework comprising the development of various integrated fuzzy decision tree and regression (FDTR) models as well as model optimization was developed to facilitate the selection o...

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Main Authors: Mohammadiun, S., Hu, G., Alavi Gharahbagh, A., Mirshahi, R., Li, J., Hewage, K., Sadiq, R.
Format: Article in Journal/Newspaper
Language:unknown
Published: 2021
Subjects:
Online Access:http://eprints.iums.ac.ir/32925/
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85098071799&doi=10.1016%2fj.knosys.2020.106676&partnerID=40&md5=02f3bed72ab4cbe6b82a694c232a845e
id ftiranunivms:oai:eprints.iums.ac.ir:32925
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spelling ftiranunivms:oai:eprints.iums.ac.ir:32925 2023-05-15T14:24:58+02:00 Optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the Arctic Mohammadiun, S. Hu, G. Alavi Gharahbagh, A. Mirshahi, R. Li, J. Hewage, K. Sadiq, R. 2021 http://eprints.iums.ac.ir/32925/ https://www.scopus.com/inward/record.uri?eid=2-s2.0-85098071799&doi=10.1016%2fj.knosys.2020.106676&partnerID=40&md5=02f3bed72ab4cbe6b82a694c232a845e unknown Mohammadiun, S. and Hu, G. and Alavi Gharahbagh, A. and Mirshahi, R. and Li, J. and Hewage, K. and Sadiq, R. (2021) Optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the Arctic. Knowledge-Based Systems, 213. QT Physiology Article PeerReviewed 2021 ftiranunivms 2023-02-06T18:03:31Z The challenging oil spill response in the Arctic calls for effective response decision support tools. In this study, a framework comprising the development of various integrated fuzzy decision tree and regression (FDTR) models as well as model optimization was developed to facilitate the selection of suitable response methods for oil spill accidents in Arctic waters. The FDTR models took into account the influential attributes affecting the effectiveness of oil spill response in harsh Arctic environments. Different FDTR models were developed based on the combinations of three regression analyses, including linear, non-linear, and Gaussian process regression (GPR) and four information evaluation measures for splitting a decision tree, including information gain, deviance, GINI impurities (GINI), and misclassification error. Non-dominated sorting differential evolution (NSDE) optimization was employed to enhance the predictive performance of the FDTR models. The prediction performance of the FDTR models was compared using an oil spill dataset. Using this framework, the average prediction accuracy and the number of rules (representing the robustness) of FDTRs were increased by 14 and decreased by 57, respectively. A set of optimal prediction models to promptly select an appropriate response method can be obtained using this framework. Among all models, GPR-GINI performed the best concerning optimal values of objective functions. © 2020 Elsevier B.V. Article in Journal/Newspaper Arctic Arctic eprints Iran University of Medical Sciences Arctic
institution Open Polar
collection eprints Iran University of Medical Sciences
op_collection_id ftiranunivms
language unknown
topic QT Physiology
spellingShingle QT Physiology
Mohammadiun, S.
Hu, G.
Alavi Gharahbagh, A.
Mirshahi, R.
Li, J.
Hewage, K.
Sadiq, R.
Optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the Arctic
topic_facet QT Physiology
description The challenging oil spill response in the Arctic calls for effective response decision support tools. In this study, a framework comprising the development of various integrated fuzzy decision tree and regression (FDTR) models as well as model optimization was developed to facilitate the selection of suitable response methods for oil spill accidents in Arctic waters. The FDTR models took into account the influential attributes affecting the effectiveness of oil spill response in harsh Arctic environments. Different FDTR models were developed based on the combinations of three regression analyses, including linear, non-linear, and Gaussian process regression (GPR) and four information evaluation measures for splitting a decision tree, including information gain, deviance, GINI impurities (GINI), and misclassification error. Non-dominated sorting differential evolution (NSDE) optimization was employed to enhance the predictive performance of the FDTR models. The prediction performance of the FDTR models was compared using an oil spill dataset. Using this framework, the average prediction accuracy and the number of rules (representing the robustness) of FDTRs were increased by 14 and decreased by 57, respectively. A set of optimal prediction models to promptly select an appropriate response method can be obtained using this framework. Among all models, GPR-GINI performed the best concerning optimal values of objective functions. © 2020 Elsevier B.V.
format Article in Journal/Newspaper
author Mohammadiun, S.
Hu, G.
Alavi Gharahbagh, A.
Mirshahi, R.
Li, J.
Hewage, K.
Sadiq, R.
author_facet Mohammadiun, S.
Hu, G.
Alavi Gharahbagh, A.
Mirshahi, R.
Li, J.
Hewage, K.
Sadiq, R.
author_sort Mohammadiun, S.
title Optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the Arctic
title_short Optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the Arctic
title_full Optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the Arctic
title_fullStr Optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the Arctic
title_full_unstemmed Optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the Arctic
title_sort optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the arctic
publishDate 2021
url http://eprints.iums.ac.ir/32925/
https://www.scopus.com/inward/record.uri?eid=2-s2.0-85098071799&doi=10.1016%2fj.knosys.2020.106676&partnerID=40&md5=02f3bed72ab4cbe6b82a694c232a845e
geographic Arctic
geographic_facet Arctic
genre Arctic
Arctic
genre_facet Arctic
Arctic
op_relation Mohammadiun, S. and Hu, G. and Alavi Gharahbagh, A. and Mirshahi, R. and Li, J. and Hewage, K. and Sadiq, R. (2021) Optimization of integrated fuzzy decision tree and regression models for selection of oil spill response method in the Arctic. Knowledge-Based Systems, 213.
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