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Efficient privacy preservation of big data for accurate data mining

journal contribution
posted on 2024-11-01, 12:08 authored by Pathum Chamikara Mahawaga Arachchige, Peter Bertok, Dongxi Liu, Seyit Camtepe, Ibrahim KhalilIbrahim Khalil
Computing technologies pervade physical spaces and human lives, and produce a vast amount of data that is available for analysis. However, there is a growing concern that potentially sensitive data may become public if the collected data are not appropriately sanitized before being released for investigation. Although there are more than a few privacy-preserving methods available, they are not efficient, scalable, or have problems with data utility, or privacy. This paper addresses these issues by proposing an efficient and scalable nonreversible perturbation algorithm, PABIDOT, for privacy preservation of big data via optimal geometric transformations. PABIDOT was tested for efficiency, scalability, attack resistance, and accuracy using nine datasets and five classification algorithms. Experiments show that PABIDOT excels in execution speed, scalability, attack resistance, and accuracy in large-scale privacy-preserving data classification when compared with two other, related privacy-preserving algorithms.

History

Journal

Information Sciences

Volume

527

Start page

420

End page

443

Total pages

24

Publisher

Elsevier

Place published

United States

Language

English

Copyright

© 2019 Elsevier Inc. All rights reserved.

Former Identifier

2006093120

Esploro creation date

2020-06-22

Fedora creation date

2019-08-22

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