Knowledge Fusion by Harnessing Support Vector Machines for Collaborative Uncertain Data Classification in Multiagent Systems

Distributed data mining (DDM) has emerged as a useful method for analyzing data that is spread across multiple sources. Nevertheless, DDM has other challenges that restrict its effectiveness, such as autonomy, privacy, efficiency, and implementation. DDM's rigidity and lack of adaptability may...

وصف كامل

محفوظ في:
التفاصيل البيبلوغرافية
المؤلف الرئيسي: Hussein, Ahmad MohdAziz (author)
مؤلفون آخرون: Al-azzeh, Rashed M H (author), Mughaid, Ala (author), Abu Zitar, Raed (author), Migdady, Hazem (author), Abualigah, Laith (author)
منشور في: 2024
الموضوعات:
الوصول للمادة أونلاين:https://depot.sorbonne.ae/handle/20.500.12458/1530
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author Hussein, Ahmad MohdAziz
author2 Al-azzeh, Rashed M H
Mughaid, Ala
Abu Zitar, Raed
Migdady, Hazem
Abualigah, Laith
author2_role author
author
author
author
author
author_facet Hussein, Ahmad MohdAziz
Al-azzeh, Rashed M H
Mughaid, Ala
Abu Zitar, Raed
Migdady, Hazem
Abualigah, Laith
author_role author
dc.creator.none.fl_str_mv Hussein, Ahmad MohdAziz
Al-azzeh, Rashed M H
Mughaid, Ala
Abu Zitar, Raed
Migdady, Hazem
Abualigah, Laith
dc.date.none.fl_str_mv 2024-03-14T10:19:20Z
2024-03-14T10:19:20Z
2024
dc.format.none.fl_str_mv application/pdf
dc.identifier.none.fl_str_mv migrationletters.com/index.php/ml/article/view/9169
https://depot.sorbonne.ae/handle/20.500.12458/1530
dc.language.none.fl_str_mv en
dc.relation.none.fl_str_mv Migration Letters
dc.subject.none.fl_str_mv Distributed Data Mining
Multiagent Systems
MAS-DDM
Support Vector Machines
Uncertain Data
Knowledge Sharing
dc.title.none.fl_str_mv Knowledge Fusion by Harnessing Support Vector Machines for Collaborative Uncertain Data Classification in Multiagent Systems
dc.type.none.fl_str_mv Controlled Vocabulary for Resource Type Genres::text::periodical::journal::contribution to journal::journal article
description Distributed data mining (DDM) has emerged as a useful method for analyzing data that is spread across multiple sources. Nevertheless, DDM has other challenges that restrict its effectiveness, such as autonomy, privacy, efficiency, and implementation. DDM's rigidity and lack of adaptability may render it unsuitable for numerous applications due to its requirement for a consistent environment, administration, control, and categorization procedures. In order to address these challenges, we suggest the implementation of MAS-DDM, which combines a multiagent system (MAS) with DDM. MAS, or Multiagent Systems, is a methodology used to create independent agents that possess shared environments and can collaborate and communicate with one another. The study showcases the advantages and attractiveness of MAS-DDM. In the context of MAS-DDM, agents can exchange their thoughts, even when the data they possess is classified and cannot be disclosed. Other agents can then decide whether to incorporate these beliefs into their decision-making process, which may result in a revision of their initial assumptions about each data class. MAS-DDM focuses on the support vector machine (SVM) method, which is commonly employed for handling uncertain data. Our investigation demonstrates that the performance of MAS-DDM surpasses that of DDM strategies that do not incorporate communicative processes, even when all MAS-DDM agents utilize the same methodology. We present empirical evidence demonstrating that the precision of the categorization job is significantly enhanced through the exchange of knowledge among agents.
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network_acronym_str sorbonner
network_name_str Sorbonne University Abu Dhabi repository
oai_identifier_str oai:depot.sorbonne.ae:20.500.12458/1530
publishDate 2024
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spelling Knowledge Fusion by Harnessing Support Vector Machines for Collaborative Uncertain Data Classification in Multiagent SystemsHussein, Ahmad MohdAzizAl-azzeh, Rashed M HMughaid, AlaAbu Zitar, RaedMigdady, HazemAbualigah, LaithDistributed Data MiningMultiagent SystemsMAS-DDMSupport Vector MachinesUncertain DataKnowledge SharingDistributed data mining (DDM) has emerged as a useful method for analyzing data that is spread across multiple sources. Nevertheless, DDM has other challenges that restrict its effectiveness, such as autonomy, privacy, efficiency, and implementation. DDM's rigidity and lack of adaptability may render it unsuitable for numerous applications due to its requirement for a consistent environment, administration, control, and categorization procedures. In order to address these challenges, we suggest the implementation of MAS-DDM, which combines a multiagent system (MAS) with DDM. MAS, or Multiagent Systems, is a methodology used to create independent agents that possess shared environments and can collaborate and communicate with one another. The study showcases the advantages and attractiveness of MAS-DDM. In the context of MAS-DDM, agents can exchange their thoughts, even when the data they possess is classified and cannot be disclosed. Other agents can then decide whether to incorporate these beliefs into their decision-making process, which may result in a revision of their initial assumptions about each data class. MAS-DDM focuses on the support vector machine (SVM) method, which is commonly employed for handling uncertain data. Our investigation demonstrates that the performance of MAS-DDM surpasses that of DDM strategies that do not incorporate communicative processes, even when all MAS-DDM agents utilize the same methodology. We present empirical evidence demonstrating that the precision of the categorization job is significantly enhanced through the exchange of knowledge among agents.2024-03-14T10:19:20Z2024-03-14T10:19:20Z2024Controlled Vocabulary for Resource Type Genres::text::periodical::journal::contribution to journal::journal articleapplication/pdfmigrationletters.com/index.php/ml/article/view/9169https://depot.sorbonne.ae/handle/20.500.12458/1530enMigration Lettersoai:depot.sorbonne.ae:20.500.12458/15302024-07-17T12:11:14Z
spellingShingle Knowledge Fusion by Harnessing Support Vector Machines for Collaborative Uncertain Data Classification in Multiagent Systems
Hussein, Ahmad MohdAziz
Distributed Data Mining
Multiagent Systems
MAS-DDM
Support Vector Machines
Uncertain Data
Knowledge Sharing
title Knowledge Fusion by Harnessing Support Vector Machines for Collaborative Uncertain Data Classification in Multiagent Systems
title_full Knowledge Fusion by Harnessing Support Vector Machines for Collaborative Uncertain Data Classification in Multiagent Systems
title_fullStr Knowledge Fusion by Harnessing Support Vector Machines for Collaborative Uncertain Data Classification in Multiagent Systems
title_full_unstemmed Knowledge Fusion by Harnessing Support Vector Machines for Collaborative Uncertain Data Classification in Multiagent Systems
title_short Knowledge Fusion by Harnessing Support Vector Machines for Collaborative Uncertain Data Classification in Multiagent Systems
title_sort Knowledge Fusion by Harnessing Support Vector Machines for Collaborative Uncertain Data Classification in Multiagent Systems
topic Distributed Data Mining
Multiagent Systems
MAS-DDM
Support Vector Machines
Uncertain Data
Knowledge Sharing
url https://depot.sorbonne.ae/handle/20.500.12458/1530