4.6 Article

Preserving Privacy of High-Dimensional Data by l-Diverse Constrained Slicing

Journal

ELECTRONICS
Volume 11, Issue 8, Pages -

Publisher

MDPI
DOI: 10.3390/electronics11081257

Keywords

business intelligence; privacy-preserving data publication; high-dimensional data; l-diversity; constrained slicing

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In the modern world of digitalization, privacy preservation has become an important concern due to the widespread adoption of IoT and cloud-based smart devices. However, there is a lack of research on privacy solutions for high-dimensional data. This paper proposes a novel privacy-preserving model that can effectively protect high-dimensional data from various privacy attacks.
In the modern world of digitalization, data growth, aggregation and sharing have escalated drastically. Users share huge amounts of data due to the widespread adoption of Internet-of-things (IoT) and cloud-based smart devices. Such data could have confidential attributes about various individuals. Therefore, privacy preservation has become an important concern. Many privacy-preserving data publication models have been proposed to ensure data sharing without privacy disclosures. However, publishing high-dimensional data with sufficient privacy is still a challenging task and very little focus has been given to propound optimal privacy solutions for high-dimensional data. In this paper, we propose a novel privacy-preserving model to anonymize high-dimensional data (prone to various privacy attacks including probabilistic, skewness, and gender-specific). Our proposed model is a combination of l-diversity along with constrained slicing and vertical division. The proposed model can protect the above-stated attacks with minimal information loss. The extensive experiments on real-world datasets advocate the outperformance of our proposed model among its counterparts.

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