ASAP: Eliminating algorithm-based disclosure in privacy-preserving data publishing
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摘要
Numerous privacy-preserving data publishing algorithms were proposed to achieve privacy guarantees such as ℓ‐diversity. Many of them, however, were recently found to be vulnerable to algorithm-based disclosure—i.e., privacy leakage incurred by an adversary who is aware of the privacy-preserving algorithm being used. This paper describes generic techniques for correcting the design of existing privacy-preserving data publishing algorithms to eliminate algorithm-based disclosure. We first show that algorithm-based disclosure is more prevalent and serious than previously studied. Then, we strictly define Algorithm-SAfe Publishing (ASAP) to capture and eliminate threats from algorithm-based disclosure. To correct the problems of existing data publishing algorithms, we propose two generic tools to be integrated in their design: global look-ahead and local look-ahead. To enhance data utility, we propose another generic tool called stratified pick-up. We demonstrate the effectiveness of our tools by applying them to several popular ℓ‐diversity algorithms: Mondrian, Hilb, and MASK. We conduct extensive experiments to demonstrate the effectiveness of our tools in terms of data utility and efficiency.
论文关键词:Privacy preservation,Data publishing,Algorithm-based disclosure,Algorithm-SAfe Publishing
论文评审过程:Received 25 August 2010, Revised 10 January 2011, Accepted 8 March 2011, Available online 15 March 2011.
论文官网地址:https://doi.org/10.1016/j.is.2011.03.001