WisdomModel: convert data into wisdom

Purpose – Traditional classification algorithms always have an incorrect prediction. As the misclassification rate increases, the usefulness of the learning model decreases. This paper presents the development of a wisdom framework that reduces the error rate to less than 3% without human interventi...

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Main Authors: Israa Mahmood, Hasanen Abdullah
Format: Article
Language:English
Published: Emerald Publishing 2025-01-01
Series:Applied Computing and Informatics
Subjects:
Online Access:https://www.emerald.com/insight/content/doi/10.1108/ACI-06-2021-0155/full/pdf
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author Israa Mahmood
Hasanen Abdullah
author_facet Israa Mahmood
Hasanen Abdullah
author_sort Israa Mahmood
collection DOAJ
description Purpose – Traditional classification algorithms always have an incorrect prediction. As the misclassification rate increases, the usefulness of the learning model decreases. This paper presents the development of a wisdom framework that reduces the error rate to less than 3% without human intervention. Design/methodology/approach – The proposed WisdomModel consists of four stages: build a classifier, isolate the misclassified instances, construct an automated knowledge base for the misclassified instances and rectify incorrect prediction. This approach will identify misclassified instances by comparing them against the knowledge base. If an instance is close to a rule in the knowledge base by a certain threshold, then this instance is considered misclassified. Findings – The authors have evaluated the WisdomModel using different measures such as accuracy, recall, precision, f-measure, receiver operating characteristics (ROC) curve, area under the curve (AUC) and error rate with various data sets to prove its ability to generalize without human involvement. The results of the proposed model minimize the number of misclassified instances by at least 70% and increase the accuracy of the model minimally by 7%. Originality/value – This research focuses on defining wisdom in practical applications. Despite of the development in information system, there is still no framework or algorithm that can be used to extract wisdom from data. This research will build a general wisdom framework that can be used in any domain to reach wisdom.
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spelling doaj-art-9c605b4e50624984b7431d4ecb17abe72025-01-28T12:19:18ZengEmerald PublishingApplied Computing and Informatics2634-19642210-83272025-01-01211/213114010.1108/ACI-06-2021-0155WisdomModel: convert data into wisdomIsraa Mahmood0Hasanen Abdullah1Department of Computer Science, University of Technology, Baghdad, IraqDepartment of Computer Science, University of Technology, Baghdad, IraqPurpose – Traditional classification algorithms always have an incorrect prediction. As the misclassification rate increases, the usefulness of the learning model decreases. This paper presents the development of a wisdom framework that reduces the error rate to less than 3% without human intervention. Design/methodology/approach – The proposed WisdomModel consists of four stages: build a classifier, isolate the misclassified instances, construct an automated knowledge base for the misclassified instances and rectify incorrect prediction. This approach will identify misclassified instances by comparing them against the knowledge base. If an instance is close to a rule in the knowledge base by a certain threshold, then this instance is considered misclassified. Findings – The authors have evaluated the WisdomModel using different measures such as accuracy, recall, precision, f-measure, receiver operating characteristics (ROC) curve, area under the curve (AUC) and error rate with various data sets to prove its ability to generalize without human involvement. The results of the proposed model minimize the number of misclassified instances by at least 70% and increase the accuracy of the model minimally by 7%. Originality/value – This research focuses on defining wisdom in practical applications. Despite of the development in information system, there is still no framework or algorithm that can be used to extract wisdom from data. This research will build a general wisdom framework that can be used in any domain to reach wisdom.https://www.emerald.com/insight/content/doi/10.1108/ACI-06-2021-0155/full/pdfArtificial neural networkWisdomDIKWKnowledge base
spellingShingle Israa Mahmood
Hasanen Abdullah
WisdomModel: convert data into wisdom
Applied Computing and Informatics
Artificial neural network
Wisdom
DIKW
Knowledge base
title WisdomModel: convert data into wisdom
title_full WisdomModel: convert data into wisdom
title_fullStr WisdomModel: convert data into wisdom
title_full_unstemmed WisdomModel: convert data into wisdom
title_short WisdomModel: convert data into wisdom
title_sort wisdommodel convert data into wisdom
topic Artificial neural network
Wisdom
DIKW
Knowledge base
url https://www.emerald.com/insight/content/doi/10.1108/ACI-06-2021-0155/full/pdf
work_keys_str_mv AT israamahmood wisdommodelconvertdataintowisdom
AT hasanenabdullah wisdommodelconvertdataintowisdom