Development of a new hybrid regression model: an application of fuzzy regression and multilayer feedforward neural network methods in herbal medicine related to oral health knowledge and practice

Herbal extracts have been utilized in oral health to treat various ailments, including inflammation, as antimicrobial plaque agents, antiseptics, antioxidants, histamine release prevention, and as antibacterial, antifungal, antiviral, and antimicrobial analgesics. Herbal medication also functions...

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Main Author: Tabnjh, Abedelmlek Kalefh Sleeman
Format: Thesis
Language:English
Published: 2023
Subjects:
Online Access:http://eprints.usm.my/59768/1/ABEDELMALEK%20KALEFH%20SLEEMAN%20TABNJH-FINAL%20THESIS%20P-SGD000121%28R%29%20-E.pdf
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spelling my-usm-ep.597682024-02-13T07:58:42Z Development of a new hybrid regression model: an application of fuzzy regression and multilayer feedforward neural network methods in herbal medicine related to oral health knowledge and practice 2023-08 Tabnjh, Abedelmlek Kalefh Sleeman R Medicine RX Homeopathy Herbal extracts have been utilized in oral health to treat various ailments, including inflammation, as antimicrobial plaque agents, antiseptics, antioxidants, histamine release prevention, and as antibacterial, antifungal, antiviral, and antimicrobial analgesics. Herbal medication also functions in healing, plaque reduction in the oral cavity, and immune enhancement. There is minimal research that has used regression to link knowledge with practice and other sociodemographic variables in HMOH. To develop a hybrid model by considering bootstrap, neural network, and fuzzy regression for HMOH KP, to measure the efficacy and efficiency of the developed hybrid model for HMOH KP, and to validate the newly developed hybrid model. This study aims to develop the best strategy for handling data analysis, especially in HMOH KP, which combines fuzzy regression and Multi-layer Feedforward Neural Network (MLFFNN). R-programming software is used to write the developed syntax. All the essential steps are summarized in the R syntax. The new hybrid regression model incorporating bootstrapping, MLFFNN, and fuzzy regression increases the precision of the estimated parameters and compensates for the ambiguous relationship between the dependent and independent variables. The MLFFNN method has successfully measured the effectiveness, efficiency, and accuracy of the new hybrid model. The R2 value and the predicted value obtained are used to validate the derived model. Conclusion: This thesis presents a new methodology for creating precise and validated regression models through the utilization of the HMOH KP dataset. Moreover, this approach can be extended to any other dataset that aligns with the provided assumptions. 2023-08 Thesis http://eprints.usm.my/59768/ http://eprints.usm.my/59768/1/ABEDELMALEK%20KALEFH%20SLEEMAN%20TABNJH-FINAL%20THESIS%20P-SGD000121%28R%29%20-E.pdf application/pdf en public phd doctoral Universiti Sains Malaysia Pusat Pengajian Sains Perubatan
institution Universiti Sains Malaysia
collection USM Institutional Repository
language English
topic R Medicine
RX Homeopathy
spellingShingle R Medicine
RX Homeopathy
Tabnjh, Abedelmlek Kalefh Sleeman
Development of a new hybrid regression model: an application of fuzzy regression and multilayer feedforward neural network methods in herbal medicine related to oral health knowledge and practice
description Herbal extracts have been utilized in oral health to treat various ailments, including inflammation, as antimicrobial plaque agents, antiseptics, antioxidants, histamine release prevention, and as antibacterial, antifungal, antiviral, and antimicrobial analgesics. Herbal medication also functions in healing, plaque reduction in the oral cavity, and immune enhancement. There is minimal research that has used regression to link knowledge with practice and other sociodemographic variables in HMOH. To develop a hybrid model by considering bootstrap, neural network, and fuzzy regression for HMOH KP, to measure the efficacy and efficiency of the developed hybrid model for HMOH KP, and to validate the newly developed hybrid model. This study aims to develop the best strategy for handling data analysis, especially in HMOH KP, which combines fuzzy regression and Multi-layer Feedforward Neural Network (MLFFNN). R-programming software is used to write the developed syntax. All the essential steps are summarized in the R syntax. The new hybrid regression model incorporating bootstrapping, MLFFNN, and fuzzy regression increases the precision of the estimated parameters and compensates for the ambiguous relationship between the dependent and independent variables. The MLFFNN method has successfully measured the effectiveness, efficiency, and accuracy of the new hybrid model. The R2 value and the predicted value obtained are used to validate the derived model. Conclusion: This thesis presents a new methodology for creating precise and validated regression models through the utilization of the HMOH KP dataset. Moreover, this approach can be extended to any other dataset that aligns with the provided assumptions.
format Thesis
qualification_name Doctor of Philosophy (PhD.)
qualification_level Doctorate
author Tabnjh, Abedelmlek Kalefh Sleeman
author_facet Tabnjh, Abedelmlek Kalefh Sleeman
author_sort Tabnjh, Abedelmlek Kalefh Sleeman
title Development of a new hybrid regression model: an application of fuzzy regression and multilayer feedforward neural network methods in herbal medicine related to oral health knowledge and practice
title_short Development of a new hybrid regression model: an application of fuzzy regression and multilayer feedforward neural network methods in herbal medicine related to oral health knowledge and practice
title_full Development of a new hybrid regression model: an application of fuzzy regression and multilayer feedforward neural network methods in herbal medicine related to oral health knowledge and practice
title_fullStr Development of a new hybrid regression model: an application of fuzzy regression and multilayer feedforward neural network methods in herbal medicine related to oral health knowledge and practice
title_full_unstemmed Development of a new hybrid regression model: an application of fuzzy regression and multilayer feedforward neural network methods in herbal medicine related to oral health knowledge and practice
title_sort development of a new hybrid regression model: an application of fuzzy regression and multilayer feedforward neural network methods in herbal medicine related to oral health knowledge and practice
granting_institution Universiti Sains Malaysia
granting_department Pusat Pengajian Sains Perubatan
publishDate 2023
url http://eprints.usm.my/59768/1/ABEDELMALEK%20KALEFH%20SLEEMAN%20TABNJH-FINAL%20THESIS%20P-SGD000121%28R%29%20-E.pdf
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