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Cited 3 time in webofscience Cited 4 time in scopus
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Quantifying the Vulnerability of Attributes for Effective Privacy Preservation Using Machine Learningopen access

Authors
Majeed, AbdulHwang, Seong Oun
Issue Date
Jan-2023
Publisher
IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
Keywords
Data privacy; Information integrity; Information filtering; Codes; Machine learning; Data models; Data science; Personal data; privacy; utility; anonymization; vulnerability; machine learning; responsible data science; data owners; privacy-utility trade-off; imbalanced data; privacy models
Citation
IEEE ACCESS, v.11, pp.4400 - 4411
Journal Title
IEEE ACCESS
Volume
11
Start Page
4400
End Page
4411
URI
https://scholarworks.bwise.kr/gachon/handle/2020.sw.gachon/87078
DOI
10.1109/ACCESS.2023.3235016
ISSN
2169-3536
Abstract
Personal data have been increasingly used in data-driven applications to improve quality of life. However, privacy preservation of personal data while sharing it with analysts/ researchers has become an essential requirement to be met by data owners (hospitals, banks, insurance companies, etc.). The existing literature on privacy preservation does not precisely quantify the vulnerability of each item among user attributes, thereby leading to explicit privacy disclosures and poor data utility during published data analytics. In this work, we propose and implement an automated way of quantifying the vulnerability of each item among the attributes by using a machine learning (ML) technique to significantly preserve the privacy of users without degrading data utility. Our work can solve four technical problems in the privacy preservation field: optimization of the privacy-utility trade-off, privacy guarantees (i.e., safeguard against identity and sensitive information disclosures) in imbalanced data (or clusters), over-anonymization issues, and rectifying or enabling the applicability of prior privacy models when data have skewed distributions. The experiments were performed on two real-world benchmark datasets to prove the feasibility of the concept in practical scenarios. Compared with state-of-the-art (SOTA) methods, the proposed method effectively preserves the equilibrium between utility and privacy in the anonymized data. Furthermore, our method can significantly contribute towards responsible data science (extracting enclosed knowledge from data without violating subjects' privacy) by controlling higher changes in data during its anonymization.
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MAJEED, ABDUL
College of IT Convergence (컴퓨터공학부(컴퓨터공학전공))
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