Flock optimization induced deep learning for improved diabetes disease classification

Diabetic disease classification requires a precise understanding of the clinical inputs and their intensity as observed through different stages. Automated and machine‐centric classification requires validated data handling and non‐converging inputs. For improving the classification precision impact...

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Main Authors: Balasubramaniyan, Divager, Husin, Nor Azura, Mustapha, Norwati, Mohd Sharef, Nurfadhlina, Mohd Aris, Teh Noranis
Format: Article
Published: Wiley-Blackwell Publishing 2023
Online Access:http://psasir.upm.edu.my/id/eprint/108025/
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author Balasubramaniyan, Divager
Husin, Nor Azura
Mustapha, Norwati
Mohd Sharef, Nurfadhlina
Mohd Aris, Teh Noranis
author_facet Balasubramaniyan, Divager
Husin, Nor Azura
Mustapha, Norwati
Mohd Sharef, Nurfadhlina
Mohd Aris, Teh Noranis
author_sort Balasubramaniyan, Divager
building UPM Institutional Repository
collection Online Access
description Diabetic disease classification requires a precise understanding of the clinical inputs and their intensity as observed through different stages. Automated and machine‐centric classification requires validated data handling and non‐converging inputs. For improving the classification precision impacted due by complex computations, this article introduces an assimilated method incorporating flock optimization and conventional deep learning. Deep learning trains the classification system through the best‐fit solution generated by the flock optimization. The features from the input data are first identified for which an initial population is initiated. The identified features are classified based on their leap‐up behaviour; this behaviour is induced if the data feature modifies the actual representation. If the data feature shows up over‐fitting behaviour, then it is classified as abnormal and is discarded. Therefore the objective function is to identify the best‐fitting data feature from the maximum flock members showing similar leap‐up behaviour. This output is used for training the deep learning paradigm for classifying precision‐less and high features. The precision is determined using existing classified data that matches better the flock output. If the classified data is under less precision, then the leap‐up behaviours' objective is tuned to eliminate over‐fitting inputs. Therefore, the variable features are thwarted for preventing precision degradation for varying diabetics' clinical observed data. The introduced system maximize the recognition accuracy by 8.47% and minimize the complexity by 7.65%.
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format Article
id upm-108025
institution Universiti Putra Malaysia
institution_category Local University
last_indexed 2025-11-15T13:58:35Z
publishDate 2023
publisher Wiley-Blackwell Publishing
recordtype eprints
repository_type Digital Repository
spelling upm-1080252024-09-26T04:00:07Z http://psasir.upm.edu.my/id/eprint/108025/ Flock optimization induced deep learning for improved diabetes disease classification Balasubramaniyan, Divager Husin, Nor Azura Mustapha, Norwati Mohd Sharef, Nurfadhlina Mohd Aris, Teh Noranis Diabetic disease classification requires a precise understanding of the clinical inputs and their intensity as observed through different stages. Automated and machine‐centric classification requires validated data handling and non‐converging inputs. For improving the classification precision impacted due by complex computations, this article introduces an assimilated method incorporating flock optimization and conventional deep learning. Deep learning trains the classification system through the best‐fit solution generated by the flock optimization. The features from the input data are first identified for which an initial population is initiated. The identified features are classified based on their leap‐up behaviour; this behaviour is induced if the data feature modifies the actual representation. If the data feature shows up over‐fitting behaviour, then it is classified as abnormal and is discarded. Therefore the objective function is to identify the best‐fitting data feature from the maximum flock members showing similar leap‐up behaviour. This output is used for training the deep learning paradigm for classifying precision‐less and high features. The precision is determined using existing classified data that matches better the flock output. If the classified data is under less precision, then the leap‐up behaviours' objective is tuned to eliminate over‐fitting inputs. Therefore, the variable features are thwarted for preventing precision degradation for varying diabetics' clinical observed data. The introduced system maximize the recognition accuracy by 8.47% and minimize the complexity by 7.65%. Wiley-Blackwell Publishing 2023 Article PeerReviewed Balasubramaniyan, Divager and Husin, Nor Azura and Mustapha, Norwati and Mohd Sharef, Nurfadhlina and Mohd Aris, Teh Noranis (2023) Flock optimization induced deep learning for improved diabetes disease classification. Expert Systems. pp. 1-20. ISSN 0266-4720; ESSN: 1468-0394 https://onlinelibrary.wiley.com/doi/10.1111/exsy.13305 10.1111/exsy.13305
spellingShingle Balasubramaniyan, Divager
Husin, Nor Azura
Mustapha, Norwati
Mohd Sharef, Nurfadhlina
Mohd Aris, Teh Noranis
Flock optimization induced deep learning for improved diabetes disease classification
title Flock optimization induced deep learning for improved diabetes disease classification
title_full Flock optimization induced deep learning for improved diabetes disease classification
title_fullStr Flock optimization induced deep learning for improved diabetes disease classification
title_full_unstemmed Flock optimization induced deep learning for improved diabetes disease classification
title_short Flock optimization induced deep learning for improved diabetes disease classification
title_sort flock optimization induced deep learning for improved diabetes disease classification
url http://psasir.upm.edu.my/id/eprint/108025/
http://psasir.upm.edu.my/id/eprint/108025/
http://psasir.upm.edu.my/id/eprint/108025/