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Cloud-assisted distributed private data sharing
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Cloud-assisted distributed private data sharing

Abstract

Data privacy is an important issue to address when multiple data owners are required to integrate and share sensitive information for data analysis. In this article, we study the privacy threats caused by distributed data sharing and present the first cloud-based data sharing framework to integrate horizontally partitioned data from multiple data owners. The cloud performs the anonymization in a top-down fashion. It proceeds from the most generalized values of attributes (serve as the root of the tree) and specializes them (i.e., generate less generalized values as siblings of the parent node) in every iteration. A candidate value is selected for specialization in each iteration based on its score. The score of each candidate is calculated securely using multiple cryptographic protocols to ensure security. Finally, the cloud adds noise to the integrated data and releases them in a differentially private manner. Experimental results on real-life data set demonstrate that the proposed algorithm retains data utility for supporting classification analysis and provide similar classification accuracy compared to that of the centralized data dissemination mechanism.

Authors

Chen F; Mohammed N; Wang S; He W; Cheng S; Jiang X

Pagination

pp. 202-211

Publisher

Association for Computing Machinery (ACM)

Publication Date

September 9, 2015

DOI

10.1145/2808719.2808740

Name of conference

Proceedings of the 6th ACM Conference on Bioinformatics, Computational Biology and Health Informatics
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