Privacy beyond single sensitive attribute
Publishing individual specific microdata has serious privacy implications. The k-anonymity model has been proposed to prevent identity disclosure from microdata, and the work on ℓ-diversity and t-closeness attempt to address attribute disclosure. However, most current work only deal with publishing...
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sg-smu-ink.sis_research-50652018-07-20T05:00:35Z Privacy beyond single sensitive attribute FANG, Yuan ASHRAFI, Mafruz Zaman NG, See Kiong Publishing individual specific microdata has serious privacy implications. The k-anonymity model has been proposed to prevent identity disclosure from microdata, and the work on ℓ-diversity and t-closeness attempt to address attribute disclosure. However, most current work only deal with publishing microdata with a single sensitive attribute (SA), whereas real life scenarios often involve microdata with multiple SAs that may be multi-valued. This paper explores the issue of attribute disclosure in such scenarios. We propose a method called CODIP (Complete Disjoint Projections) that outlines a general solution to deal with the shortcomings in a naïve approach. We also introduce two measures, Association Loss Ratio and Information Exposure Ratio, to quantify data quality and privacy, respectively. We further propose a heuristic CODIP*for CODIP, which obtains a good trade-off in data quality and privacy. Finally, initial experiments show that CODIP*is practically useful on varying numbers of SAs. 2011-09-01T07:00:00Z text application/pdf https://ink.library.smu.edu.sg/sis_research/4062 info:doi/10.1007/978-3-642-23088-2_13 https://ink.library.smu.edu.sg/context/sis_research/article/5065/viewcontent/Privacy_beyond_single_sensitive_attribute_2011.pdf http://creativecommons.org/licenses/by-nc-nd/4.0/ Research Collection School Of Computing and Information Systems eng Institutional Knowledge at Singapore Management University Data quality General solutions K-Anonymity Loss ratio Microdata Sensitive attribute T-closeness Databases and Information Systems Information Security |
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Data quality General solutions K-Anonymity Loss ratio Microdata Sensitive attribute T-closeness Databases and Information Systems Information Security FANG, Yuan ASHRAFI, Mafruz Zaman NG, See Kiong Privacy beyond single sensitive attribute |
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Publishing individual specific microdata has serious privacy implications. The k-anonymity model has been proposed to prevent identity disclosure from microdata, and the work on ℓ-diversity and t-closeness attempt to address attribute disclosure. However, most current work only deal with publishing microdata with a single sensitive attribute (SA), whereas real life scenarios often involve microdata with multiple SAs that may be multi-valued. This paper explores the issue of attribute disclosure in such scenarios. We propose a method called CODIP (Complete Disjoint Projections) that outlines a general solution to deal with the shortcomings in a naïve approach. We also introduce two measures, Association Loss Ratio and Information Exposure Ratio, to quantify data quality and privacy, respectively. We further propose a heuristic CODIP*for CODIP, which obtains a good trade-off in data quality and privacy. Finally, initial experiments show that CODIP*is practically useful on varying numbers of SAs. |
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FANG, Yuan ASHRAFI, Mafruz Zaman NG, See Kiong |
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FANG, Yuan ASHRAFI, Mafruz Zaman NG, See Kiong |
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FANG, Yuan |
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Privacy beyond single sensitive attribute |
title_short |
Privacy beyond single sensitive attribute |
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Privacy beyond single sensitive attribute |
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Privacy beyond single sensitive attribute |
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Privacy beyond single sensitive attribute |
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privacy beyond single sensitive attribute |
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Institutional Knowledge at Singapore Management University |
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2011 |
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https://ink.library.smu.edu.sg/sis_research/4062 https://ink.library.smu.edu.sg/context/sis_research/article/5065/viewcontent/Privacy_beyond_single_sensitive_attribute_2011.pdf |
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