Ranking data privacy techniques in cloud computing based on Tamir’s complex fuzzy Schweizer-Sklar aggregation approach

Abstract In the era of cloud computing, it has become an important challenge to secure data privacy by storing and processing massive amounts of sensitive information in shared environments. Cloud platforms have become a necessary component for managing personal, commercial, and governmental data. T...

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Main Authors: Jabbar Ahmmad, Hamiden Abd El-Wahed Khalifa, Hafiz Muhammad Waqas, Alhanouf Alburaikan, Taha Radwan
Format: Article
Language:English
Published: Nature Portfolio 2025-07-01
Series:Scientific Reports
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Online Access:https://doi.org/10.1038/s41598-025-09557-z
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author Jabbar Ahmmad
Hamiden Abd El-Wahed Khalifa
Hafiz Muhammad Waqas
Alhanouf Alburaikan
Taha Radwan
author_facet Jabbar Ahmmad
Hamiden Abd El-Wahed Khalifa
Hafiz Muhammad Waqas
Alhanouf Alburaikan
Taha Radwan
author_sort Jabbar Ahmmad
collection DOAJ
description Abstract In the era of cloud computing, it has become an important challenge to secure data privacy by storing and processing massive amounts of sensitive information in shared environments. Cloud platforms have become a necessary component for managing personal, commercial, and governmental data. Thus, the demand for effective data privacy techniques within cloud security frameworks has increased. Data privacy is no longer just an exercise in compliance but rather to reassure stakeholders and protect precious information from cyber-attacks. The decision-making (DM) landscape in the case of cloud providers, therefore, is extremely complex because they would need to select the optimal approach among the very wide gamut of privacy techniques, which range from encryption to anonymization. A novel complex fuzzy Schweizer-Sklar aggregation approach can rank and prioritize data privacy techniques and is particularly suitable for cloud settings. Our method can easily deal with uncertainties and multi-dimensional aspects of privacy evaluation. In this manuscript, first, we introduce the fundamental Schweizer-Sklar operational laws for a cartesian form of complex fuzzy framework. Then relying on these operational laws, we have initiated the notions of cartesian form of complex fuzzy Schweizer-Sklar power average and complex fuzzy Schweizer-Sklar power geometric AOs. We have developed the main properties related to these notions like Idempotency, Boundedness, and monotonicity. Also, we explored an algorithm for the utilization of the developed theory. Moreover, we provided an illustrative example and case study for the developed theory to show the ranking of data privacy techniques in cloud computing. At the end of the manuscript, we discuss the comparative analysis to show the supremacy of the introduced work.
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spelling doaj-art-4d84510422c047a7bd85b4b7d8c0722f2025-08-20T03:45:53ZengNature PortfolioScientific Reports2045-23222025-07-0115112010.1038/s41598-025-09557-zRanking data privacy techniques in cloud computing based on Tamir’s complex fuzzy Schweizer-Sklar aggregation approachJabbar Ahmmad0Hamiden Abd El-Wahed Khalifa1Hafiz Muhammad Waqas2Alhanouf Alburaikan3Taha Radwan4Department of Mathematics and Statistics, International Islamic UniversityDepartment of Mathematics, College of Science, Qassim UniversityDepartment of Mathematics and Statistics, International Islamic UniversityDepartment of Mathematics, College of Science, Qassim UniversityDepartment of Management Information Systems, College of Business and Economics, Qassim UniversityAbstract In the era of cloud computing, it has become an important challenge to secure data privacy by storing and processing massive amounts of sensitive information in shared environments. Cloud platforms have become a necessary component for managing personal, commercial, and governmental data. Thus, the demand for effective data privacy techniques within cloud security frameworks has increased. Data privacy is no longer just an exercise in compliance but rather to reassure stakeholders and protect precious information from cyber-attacks. The decision-making (DM) landscape in the case of cloud providers, therefore, is extremely complex because they would need to select the optimal approach among the very wide gamut of privacy techniques, which range from encryption to anonymization. A novel complex fuzzy Schweizer-Sklar aggregation approach can rank and prioritize data privacy techniques and is particularly suitable for cloud settings. Our method can easily deal with uncertainties and multi-dimensional aspects of privacy evaluation. In this manuscript, first, we introduce the fundamental Schweizer-Sklar operational laws for a cartesian form of complex fuzzy framework. Then relying on these operational laws, we have initiated the notions of cartesian form of complex fuzzy Schweizer-Sklar power average and complex fuzzy Schweizer-Sklar power geometric AOs. We have developed the main properties related to these notions like Idempotency, Boundedness, and monotonicity. Also, we explored an algorithm for the utilization of the developed theory. Moreover, we provided an illustrative example and case study for the developed theory to show the ranking of data privacy techniques in cloud computing. At the end of the manuscript, we discuss the comparative analysis to show the supremacy of the introduced work.https://doi.org/10.1038/s41598-025-09557-zCloud computingDecision makingOptimizationTamir’s complex fuzzy setSchweizer-Sklar aggregation operators
spellingShingle Jabbar Ahmmad
Hamiden Abd El-Wahed Khalifa
Hafiz Muhammad Waqas
Alhanouf Alburaikan
Taha Radwan
Ranking data privacy techniques in cloud computing based on Tamir’s complex fuzzy Schweizer-Sklar aggregation approach
Scientific Reports
Cloud computing
Decision making
Optimization
Tamir’s complex fuzzy set
Schweizer-Sklar aggregation operators
title Ranking data privacy techniques in cloud computing based on Tamir’s complex fuzzy Schweizer-Sklar aggregation approach
title_full Ranking data privacy techniques in cloud computing based on Tamir’s complex fuzzy Schweizer-Sklar aggregation approach
title_fullStr Ranking data privacy techniques in cloud computing based on Tamir’s complex fuzzy Schweizer-Sklar aggregation approach
title_full_unstemmed Ranking data privacy techniques in cloud computing based on Tamir’s complex fuzzy Schweizer-Sklar aggregation approach
title_short Ranking data privacy techniques in cloud computing based on Tamir’s complex fuzzy Schweizer-Sklar aggregation approach
title_sort ranking data privacy techniques in cloud computing based on tamir s complex fuzzy schweizer sklar aggregation approach
topic Cloud computing
Decision making
Optimization
Tamir’s complex fuzzy set
Schweizer-Sklar aggregation operators
url https://doi.org/10.1038/s41598-025-09557-z
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