Classification rule hierarchical tuning with linguistic modification based on solving fuzzy relational equations

The common problem with the hierarchical tuning methods is the lack of conditions for modification of the primary rules. The incremental approach accelerates the generation of candidate rules, but complicates the selection of the primary and modified rules. In the paper, the approach that combines...

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Main Author: Hanna Rakytyanska
Format: Article
Language:English
Published: PC Technology Center 2018-02-01
Series:Eastern-European Journal of Enterprise Technologies
Subjects:
Online Access:http://journals.uran.ua/eejet/article/view/123567
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spelling doaj-7700562a3a91441b96ffecf93d0412b32020-11-25T01:12:13ZengPC Technology CenterEastern-European Journal of Enterprise Technologies1729-37741729-40612018-02-0114 (91)505810.15587/1729-4061.2018.123567123567Classification rule hierarchical tuning with linguistic modification based on solving fuzzy relational equationsHanna Rakytyanska0Vinnytsia National Technical University Khmelnytske shose str., 95, Vinnytsia, Ukraine, 21021The common problem with the hierarchical tuning methods is the lack of conditions for modification of the primary rules. The incremental approach accelerates the generation of candidate rules, but complicates the selection of the primary and modified rules. In the paper, the approach that combines semantic training, granular partition and solution of fuzzy relational equations for constructing accurate and interpretable rules is developed. The composite fuzzy model of direct logic inference based on the primary rules with granular parameters is proposed. The method of hierarchical tuning with the linguistic modification based on solving fuzzy relational equations is developed, which allows reducing the training time. It is shown that the weights of the primary rules, which are subject to modification, as well as the hedging threshold of the primary terms, are solutions of the primary system of fuzzy logic equations with the hierarchical max-min/min-max composition, which solves the problem of the hierarchical selection of the primary and modified rules for the given output classes. The genetic-neural approach was used for tuning the primary rules and solving the system of equations, as well as tuning the composite rules. The effectiveness of the approach is illustrated by the example of tuning and interpreting the solutions to the technological process quality control problem for the specified productivity classes. The primary model with granular parameters allows reducing the tuning error by 25 % compared to the primary relational model. The solution of the hierarchical selection problem allows reducing the tuning time by half.http://journals.uran.ua/eejet/article/view/123567hierarchical tuningfuzzy classification knowledge basessolving fuzzy relational equations
collection DOAJ
language English
format Article
sources DOAJ
author Hanna Rakytyanska
spellingShingle Hanna Rakytyanska
Classification rule hierarchical tuning with linguistic modification based on solving fuzzy relational equations
Eastern-European Journal of Enterprise Technologies
hierarchical tuning
fuzzy classification knowledge bases
solving fuzzy relational equations
author_facet Hanna Rakytyanska
author_sort Hanna Rakytyanska
title Classification rule hierarchical tuning with linguistic modification based on solving fuzzy relational equations
title_short Classification rule hierarchical tuning with linguistic modification based on solving fuzzy relational equations
title_full Classification rule hierarchical tuning with linguistic modification based on solving fuzzy relational equations
title_fullStr Classification rule hierarchical tuning with linguistic modification based on solving fuzzy relational equations
title_full_unstemmed Classification rule hierarchical tuning with linguistic modification based on solving fuzzy relational equations
title_sort classification rule hierarchical tuning with linguistic modification based on solving fuzzy relational equations
publisher PC Technology Center
series Eastern-European Journal of Enterprise Technologies
issn 1729-3774
1729-4061
publishDate 2018-02-01
description The common problem with the hierarchical tuning methods is the lack of conditions for modification of the primary rules. The incremental approach accelerates the generation of candidate rules, but complicates the selection of the primary and modified rules. In the paper, the approach that combines semantic training, granular partition and solution of fuzzy relational equations for constructing accurate and interpretable rules is developed. The composite fuzzy model of direct logic inference based on the primary rules with granular parameters is proposed. The method of hierarchical tuning with the linguistic modification based on solving fuzzy relational equations is developed, which allows reducing the training time. It is shown that the weights of the primary rules, which are subject to modification, as well as the hedging threshold of the primary terms, are solutions of the primary system of fuzzy logic equations with the hierarchical max-min/min-max composition, which solves the problem of the hierarchical selection of the primary and modified rules for the given output classes. The genetic-neural approach was used for tuning the primary rules and solving the system of equations, as well as tuning the composite rules. The effectiveness of the approach is illustrated by the example of tuning and interpreting the solutions to the technological process quality control problem for the specified productivity classes. The primary model with granular parameters allows reducing the tuning error by 25 % compared to the primary relational model. The solution of the hierarchical selection problem allows reducing the tuning time by half.
topic hierarchical tuning
fuzzy classification knowledge bases
solving fuzzy relational equations
url http://journals.uran.ua/eejet/article/view/123567
work_keys_str_mv AT hannarakytyanska classificationrulehierarchicaltuningwithlinguisticmodificationbasedonsolvingfuzzyrelationalequations
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