A Hybrid of Artificial Bee Colony, Genetic Algorithm, and Neural Network for Diabetic Mellitus Diagnosing

Researchers, widely have introduced the Artificial Bee Colony (ABC) as an optimization algorithm to deal with classification, and prediction problems. ABC has been combined with different Artificial Intelligent (AI) techniques to obtain optimum performance indicators. This work introduces a hybrid o...

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Main Authors: Tarik A. Rashid, Saman M. Abdullah
Format: Article
Language:English
Published: Koya University 2018-06-01
Series:ARO-The Scientific Journal of Koya University
Subjects:
Online Access:http://aro.koyauniversity.org/article/view/368
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spelling doaj-561a42dcd0a94f3282516401904f70f32021-05-02T15:30:20ZengKoya UniversityARO-The Scientific Journal of Koya University2410-93552307-549X2018-06-0161556410.14500/aro.1036882A Hybrid of Artificial Bee Colony, Genetic Algorithm, and Neural Network for Diabetic Mellitus DiagnosingTarik A. Rashid0Saman M. Abdullah1(1) Department of Science and Engineering, University of Kurdistan Hewler, Erbil, Kurdistan Region – F.R. Iraq. (2) Department of Software and Informatics Engineering, Salahaddin University, Erbil, Kurdistan Region – F.R. Iraq.(1) Department of Software Engineering, Faculty of Engineering, Koya University, Kurdistan Region – F.R. Iraq. (2) Department of Computer Engineering, Ishik University, Erbil, Kurdistan Region – F.R. Iraq.Researchers, widely have introduced the Artificial Bee Colony (ABC) as an optimization algorithm to deal with classification, and prediction problems. ABC has been combined with different Artificial Intelligent (AI) techniques to obtain optimum performance indicators. This work introduces a hybrid of ABC, Genetic Algorithm (GA), and Back Propagation Neural Network (BPNN) in the application of classifying, and diagnosing Diabetic Mellitus (DM). The optimized algorithm is combined with a mutation technique of Genetic Algorithm (GA) to obtain the optimum set of training weights for a BPNN. The idea is to prove that weights’ initial index in their initialized set has an impact on the performance rate. Experiments are conducted in three different cases; standard BPNN alone, BPNN trained with ABC, and BPNN trained with the mutation based ABC. The work tests all three cases of optimization on two different datasets (Primary dataset, and Secondary dataset) of diabetic mellitus (DM). The primary dataset is built by this work through collecting 31 features of 501 DM patients in local hospitals. The secondary dataset is the Pima dataset. Results show that the BPNN trained with the mutation based ABC can produce better local solutions than the standard BPNN and BPNN trained in combination with ABC.http://aro.koyauniversity.org/article/view/368artificial bee colony, artificial neural networks, diabetic mellitus, evolutionary algorithms.
collection DOAJ
language English
format Article
sources DOAJ
author Tarik A. Rashid
Saman M. Abdullah
spellingShingle Tarik A. Rashid
Saman M. Abdullah
A Hybrid of Artificial Bee Colony, Genetic Algorithm, and Neural Network for Diabetic Mellitus Diagnosing
ARO-The Scientific Journal of Koya University
artificial bee colony, artificial neural networks, diabetic mellitus, evolutionary algorithms.
author_facet Tarik A. Rashid
Saman M. Abdullah
author_sort Tarik A. Rashid
title A Hybrid of Artificial Bee Colony, Genetic Algorithm, and Neural Network for Diabetic Mellitus Diagnosing
title_short A Hybrid of Artificial Bee Colony, Genetic Algorithm, and Neural Network for Diabetic Mellitus Diagnosing
title_full A Hybrid of Artificial Bee Colony, Genetic Algorithm, and Neural Network for Diabetic Mellitus Diagnosing
title_fullStr A Hybrid of Artificial Bee Colony, Genetic Algorithm, and Neural Network for Diabetic Mellitus Diagnosing
title_full_unstemmed A Hybrid of Artificial Bee Colony, Genetic Algorithm, and Neural Network for Diabetic Mellitus Diagnosing
title_sort hybrid of artificial bee colony, genetic algorithm, and neural network for diabetic mellitus diagnosing
publisher Koya University
series ARO-The Scientific Journal of Koya University
issn 2410-9355
2307-549X
publishDate 2018-06-01
description Researchers, widely have introduced the Artificial Bee Colony (ABC) as an optimization algorithm to deal with classification, and prediction problems. ABC has been combined with different Artificial Intelligent (AI) techniques to obtain optimum performance indicators. This work introduces a hybrid of ABC, Genetic Algorithm (GA), and Back Propagation Neural Network (BPNN) in the application of classifying, and diagnosing Diabetic Mellitus (DM). The optimized algorithm is combined with a mutation technique of Genetic Algorithm (GA) to obtain the optimum set of training weights for a BPNN. The idea is to prove that weights’ initial index in their initialized set has an impact on the performance rate. Experiments are conducted in three different cases; standard BPNN alone, BPNN trained with ABC, and BPNN trained with the mutation based ABC. The work tests all three cases of optimization on two different datasets (Primary dataset, and Secondary dataset) of diabetic mellitus (DM). The primary dataset is built by this work through collecting 31 features of 501 DM patients in local hospitals. The secondary dataset is the Pima dataset. Results show that the BPNN trained with the mutation based ABC can produce better local solutions than the standard BPNN and BPNN trained in combination with ABC.
topic artificial bee colony, artificial neural networks, diabetic mellitus, evolutionary algorithms.
url http://aro.koyauniversity.org/article/view/368
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