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<b>URL:</b>
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<a href="http://www.springerlink.com/content/n1404m0668452854/">http://www.springerlink.com/content/n1404m0668452854/</a>
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<b>ENTRY DATE:</b>
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2008-06-16


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<b>ABSTRACT:</b>
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In this paper, we focus on the problem of preserving the privacy of
sensitive relationships in graph data. We refer to the problem of
inferring sensitive relationships from anonymized graph data as link
re-identification. We propose five different privacy preservation
strategies, which vary in terms of the amount of data removed (and hence
their utility) and the amount of privacy preserved. We assume the
adversary has an accurate predictive model for links, and we show
experimentally the success of different link re-identification
strategies under varying structural characteristics of the data.



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