A novel technique for parameter estimation in intuitionistic fuzzy logistic regression model

The Fuzzy Logistic Regression model can estimate the parameters when the data-set contains ambiguousness due to vagueness and cannot consider the degree of hesitation. Thus, this paper proposes a novel Intuitionistic Fuzzy Logistic Regression model to deal with the imprecise parameters containing th...

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Main Author: Abdullah Ali H. Ahmadini
Format: Article
Language:English
Published: Elsevier 2022-01-01
Series:Ain Shams Engineering Journal
Subjects:
Online Access:http://www.sciencedirect.com/science/article/pii/S2090447921002690
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author Abdullah Ali H. Ahmadini
author_facet Abdullah Ali H. Ahmadini
author_sort Abdullah Ali H. Ahmadini
collection DOAJ
description The Fuzzy Logistic Regression model can estimate the parameters when the data-set contains ambiguousness due to vagueness and cannot consider the degree of hesitation. Thus, this paper proposes a novel Intuitionistic Fuzzy Logistic Regression model to deal with the imprecise parameters containing the vagueness and hesitation degrees at a time. In this context, the revised Tanaka’s model is used to estimate the parameters. To illustrate the working efficiency of the proposed intuitionistic fuzzy logistic regression, we have presented the birth-weight data-set and applied it. The comparative study is also performed with other statistical models. The applicability and validity of the model are revealed by obtaining the goodness of fit criteria using Mean degrees of membership functions. On applying to the birth-weight data-set, it is observed that the intuitionistic fuzzy logistic regression values signify the good fit and are considered as the best fitting intuitionistic fuzzy logistic regression model for babies’ birth-weight data-set. The value of mean degree of membership is relatively more significant by using the proposed intuitionistic fuzzy logistic regression, which indicates the best fitting of the model compared to the fuzzy logistic regression model.
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spelling doaj.art-13f7da5c38444defb40eef773390857e2022-12-22T04:09:59ZengElsevierAin Shams Engineering Journal2090-44792022-01-01131101518A novel technique for parameter estimation in intuitionistic fuzzy logistic regression modelAbdullah Ali H. Ahmadini0Department of Mathematics, College of Science, Jazan University, Jazan, Saudi ArabiaThe Fuzzy Logistic Regression model can estimate the parameters when the data-set contains ambiguousness due to vagueness and cannot consider the degree of hesitation. Thus, this paper proposes a novel Intuitionistic Fuzzy Logistic Regression model to deal with the imprecise parameters containing the vagueness and hesitation degrees at a time. In this context, the revised Tanaka’s model is used to estimate the parameters. To illustrate the working efficiency of the proposed intuitionistic fuzzy logistic regression, we have presented the birth-weight data-set and applied it. The comparative study is also performed with other statistical models. The applicability and validity of the model are revealed by obtaining the goodness of fit criteria using Mean degrees of membership functions. On applying to the birth-weight data-set, it is observed that the intuitionistic fuzzy logistic regression values signify the good fit and are considered as the best fitting intuitionistic fuzzy logistic regression model for babies’ birth-weight data-set. The value of mean degree of membership is relatively more significant by using the proposed intuitionistic fuzzy logistic regression, which indicates the best fitting of the model compared to the fuzzy logistic regression model.http://www.sciencedirect.com/science/article/pii/S209044792100269062J02
spellingShingle Abdullah Ali H. Ahmadini
A novel technique for parameter estimation in intuitionistic fuzzy logistic regression model
Ain Shams Engineering Journal
62J02
title A novel technique for parameter estimation in intuitionistic fuzzy logistic regression model
title_full A novel technique for parameter estimation in intuitionistic fuzzy logistic regression model
title_fullStr A novel technique for parameter estimation in intuitionistic fuzzy logistic regression model
title_full_unstemmed A novel technique for parameter estimation in intuitionistic fuzzy logistic regression model
title_short A novel technique for parameter estimation in intuitionistic fuzzy logistic regression model
title_sort novel technique for parameter estimation in intuitionistic fuzzy logistic regression model
topic 62J02
url http://www.sciencedirect.com/science/article/pii/S2090447921002690
work_keys_str_mv AT abdullahalihahmadini anoveltechniqueforparameterestimationinintuitionisticfuzzylogisticregressionmodel
AT abdullahalihahmadini noveltechniqueforparameterestimationinintuitionisticfuzzylogisticregressionmodel