Model of security level classification for data in hybrid cloud computing
Organizations mainly rely on data and the mechanism of dealing with that data on cloud computing. Data in an organization has multi security levels, which is classified depending on nature of the data, and the impact of data on the organization. The security procedures which used for protecting data...
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my.uniten.dspace-225962023-05-29T14:11:16Z Model of security level classification for data in hybrid cloud computing Shakir M. Abubakar A. Yousoff O. Waseem M. Al-Emran M. 57057236900 35178991300 57190977401 57192432529 56593108000 Organizations mainly rely on data and the mechanism of dealing with that data on cloud computing. Data in an organization has multi security levels, which is classified depending on nature of the data, and the impact of data on the organization. The security procedures which used for protecting data usually be complicated, and it had a direct and indirect influence on the usability level. This study aims to establish a model which has an ability to classify data dynamically according to the security form low till high levels. The security level classified it into five levels based on the policies and classification method. The purpose of classification is to apply a complex security procedure on data which has a high security level larger than data which has a low security level. It also has a potential to segregation an illegal data from the legal to support usability in system. Finally, several experiments have been conducted to evaluate the proposed approaches. Several experiments have been performed to empirically evaluate two feature selection methods (Chi-square (?2), information gain (IG)) and five classification methods (decision tree classifier, Support Vector Machine (SVM), Na�ve Bayes (NB), and K-Nearest Neighbor (KNN) and meta-classifier combination) for Legal Documents Filtering The results show that all classifiers perform better with the information gain feature selection methods than their results with Chi-Square feature selection method. Results also show that Support Vector Machine (SVM) outperforms achieve the best results among all individual classifiers. However, the proposed meta-classifiers method achieves the best results among all classification approaches. � 2005 - 2016 JATIT & LLS. All rights reserved. Final 2023-05-29T06:11:16Z 2023-05-29T06:11:16Z 2016 Article 2-s2.0-85006374982 https://www.scopus.com/inward/record.uri?eid=2-s2.0-85006374982&partnerID=40&md5=a786299f0ff4ea8b573c509cc110952d https://irepository.uniten.edu.my/handle/123456789/22596 94 1 133 141 Asian Research Publishing Network Scopus |
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Organizations mainly rely on data and the mechanism of dealing with that data on cloud computing. Data in an organization has multi security levels, which is classified depending on nature of the data, and the impact of data on the organization. The security procedures which used for protecting data usually be complicated, and it had a direct and indirect influence on the usability level. This study aims to establish a model which has an ability to classify data dynamically according to the security form low till high levels. The security level classified it into five levels based on the policies and classification method. The purpose of classification is to apply a complex security procedure on data which has a high security level larger than data which has a low security level. It also has a potential to segregation an illegal data from the legal to support usability in system. Finally, several experiments have been conducted to evaluate the proposed approaches. Several experiments have been performed to empirically evaluate two feature selection methods (Chi-square (?2), information gain (IG)) and five classification methods (decision tree classifier, Support Vector Machine (SVM), Na�ve Bayes (NB), and K-Nearest Neighbor (KNN) and meta-classifier combination) for Legal Documents Filtering The results show that all classifiers perform better with the information gain feature selection methods than their results with Chi-Square feature selection method. Results also show that Support Vector Machine (SVM) outperforms achieve the best results among all individual classifiers. However, the proposed meta-classifiers method achieves the best results among all classification approaches. � 2005 - 2016 JATIT & LLS. All rights reserved. |
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57057236900 Shakir M. Abubakar A. Yousoff O. Waseem M. Al-Emran M. |
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Shakir M. Abubakar A. Yousoff O. Waseem M. Al-Emran M. |
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Shakir M. Abubakar A. Yousoff O. Waseem M. Al-Emran M. Model of security level classification for data in hybrid cloud computing |
author_sort |
Shakir M. |
title |
Model of security level classification for data in hybrid cloud computing |
title_short |
Model of security level classification for data in hybrid cloud computing |
title_full |
Model of security level classification for data in hybrid cloud computing |
title_fullStr |
Model of security level classification for data in hybrid cloud computing |
title_full_unstemmed |
Model of security level classification for data in hybrid cloud computing |
title_sort |
model of security level classification for data in hybrid cloud computing |
publisher |
Asian Research Publishing Network |
publishDate |
2023 |
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1806426608847814656 |