An Ensemble Approach for Extended Belief Rule-Based Systems with Parameter Optimization
The reasoning ability of the belief rule-based system is easy to be weakened by the quality of training instances, the inconsistency of rules and the values of parameters. This paper proposes an ensemble approach for extended belief rule-based systems to address this issue. The approach is based on...
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doaj-8ae06fecf094467480eaff3575dab90b2020-11-24T21:00:47ZengAtlantis PressInternational Journal of Computational Intelligence Systems 1875-68832019-11-0112210.2991/ijcis.d.191112.001An Ensemble Approach for Extended Belief Rule-Based Systems with Parameter OptimizationHong-Yun HuangYan-Qing LinQun SuXiao-Ting GongYing-Ming WangYang-Geng FuThe reasoning ability of the belief rule-based system is easy to be weakened by the quality of training instances, the inconsistency of rules and the values of parameters. This paper proposes an ensemble approach for extended belief rule-based systems to address this issue. The approach is based on the AdaBoost algorithm and the differential evolution (DE) algorithm. In the AdaBoost algorithm, the weights of samples are updated to allow the new subsequent subsystem to pay more attention to those samples misclassified by pervious system. And the DE algorithm is used as the parameter optimization engine to ensure the reasoning ability of the learned extended belief rule-based sub-systems. Since the learned sub-systems are complementary, the reasoning ability of the belief rule-based system can be boosted by combing these sub-systems. Some case studies about many classification test datasets are provided in this paper in the last. The feasibility and efficiency of the proposed approach has been proven by the experimental results.https://www.atlantis-press.com/article/125922609/viewExtended belief rule baseAdaBoostDifferential evolution algorithm |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Hong-Yun Huang Yan-Qing Lin Qun Su Xiao-Ting Gong Ying-Ming Wang Yang-Geng Fu |
spellingShingle |
Hong-Yun Huang Yan-Qing Lin Qun Su Xiao-Ting Gong Ying-Ming Wang Yang-Geng Fu An Ensemble Approach for Extended Belief Rule-Based Systems with Parameter Optimization International Journal of Computational Intelligence Systems Extended belief rule base AdaBoost Differential evolution algorithm |
author_facet |
Hong-Yun Huang Yan-Qing Lin Qun Su Xiao-Ting Gong Ying-Ming Wang Yang-Geng Fu |
author_sort |
Hong-Yun Huang |
title |
An Ensemble Approach for Extended Belief Rule-Based Systems with Parameter Optimization |
title_short |
An Ensemble Approach for Extended Belief Rule-Based Systems with Parameter Optimization |
title_full |
An Ensemble Approach for Extended Belief Rule-Based Systems with Parameter Optimization |
title_fullStr |
An Ensemble Approach for Extended Belief Rule-Based Systems with Parameter Optimization |
title_full_unstemmed |
An Ensemble Approach for Extended Belief Rule-Based Systems with Parameter Optimization |
title_sort |
ensemble approach for extended belief rule-based systems with parameter optimization |
publisher |
Atlantis Press |
series |
International Journal of Computational Intelligence Systems |
issn |
1875-6883 |
publishDate |
2019-11-01 |
description |
The reasoning ability of the belief rule-based system is easy to be weakened by the quality of training instances, the inconsistency of rules and the values of parameters. This paper proposes an ensemble approach for extended belief rule-based systems to address this issue. The approach is based on the AdaBoost algorithm and the differential evolution (DE) algorithm. In the AdaBoost algorithm, the weights of samples are updated to allow the new subsequent subsystem to pay more attention to those samples misclassified by pervious system. And the DE algorithm is used as the parameter optimization engine to ensure the reasoning ability of the learned extended belief rule-based sub-systems. Since the learned sub-systems are complementary, the reasoning ability of the belief rule-based system can be boosted by combing these sub-systems. Some case studies about many classification test datasets are provided in this paper in the last. The feasibility and efficiency of the proposed approach has been proven by the experimental results. |
topic |
Extended belief rule base AdaBoost Differential evolution algorithm |
url |
https://www.atlantis-press.com/article/125922609/view |
work_keys_str_mv |
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