A multiple sensitive attributes data publishing method with guaranteed information utility

Author:

Zhu Haibin1ORCID,Yi Tong23ORCID,Shang Songtao4ORCID,Shi Minyong5,Li Zhucheng6,Shang Wenqian5

Affiliation:

1. Department of Computer Science and Mathematics Nipissing University North Bay Ontario Canada

2. Key Lab of Education Blockchain and Intelligent Technology Ministry of Education Guangxi Normal University Guilin China

3. Guangxi Key Lab of Multi‐Source Information Mining and Security Guangxi Normal University Guilin China

4. School of Computer and Communication Engineering Zhengzhou University of Light Industry Zhengzhou China

5. School of Computer Science Communication University of China Beijing China

6. Business College Beijing Union University Beijing China

Abstract

AbstractData publishing methods can provide available information for analysis while preserving privacy. The multiple sensitive attributes data publishing, which preserves the relationship between sensitive attributes, may keep many records from being grouped and bring in a high record suppression ratio. Another category of multiple sensitive attributes data publishing, which reduces the possibility of record suppression by breaking the relationship between sensitive attributes, cannot provide the sensitive attributes association for analysis. Hence, the existing multiple sensitive attributes data publishing fails to fully account for the comprehensive information utility. To acquire a guaranteed information utility, this article defines comprehensive information loss that considers both the suppression of records and the relationship between sensitive attributes. A heuristic method is leveraged to discover the optimal anonymity scheme that has the lowest comprehensive information loss. The experimental results verify the practice of the proposed data publishing method with multiple sensitive attributes. The proposed method can guarantee information utility when compared with previous ones.

Publisher

Institution of Engineering and Technology (IET)

Subject

Artificial Intelligence,Computer Networks and Communications,Computer Vision and Pattern Recognition,Human-Computer Interaction,Information Systems

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