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De-anonymizing Social Networks with Overlapping Community Structure

Authors :
Fu, Luoyi
Wu, Xinyu
Hu, Zhongzhao
Fu, Xinzhe
Wang, Xinbing
Publication Year :
2017

Abstract

The advent of social networks poses severe threats on user privacy as adversaries can de-anonymize users' identities by mapping them to correlated cross-domain networks. Without ground-truth mapping, prior literature proposes various cost functions in hope of measuring the quality of mappings. However, there is generally a lacking of rationale behind the cost functions, whose minimizer also remains algorithmically unknown. We jointly tackle above concerns under a more practical social network model parameterized by overlapping communities, which, neglected by prior art, can serve as side information for de-anonymization. Regarding the unavailability of ground-truth mapping to adversaries, by virtue of the Minimum Mean Square Error (MMSE), our first contribution is a well-justified cost function minimizing the expected number of mismatched users over all possible true mappings. While proving the NP-hardness of minimizing MMSE, we validly transform it into the weighted-edge matching problem (WEMP), which, as disclosed theoretically, resolves the tension between optimality and complexity: (i) WEMP asymptotically returns a negligible mapping error in large network size under mild conditions facilitated by higher overlapping strength; (ii) WEMP can be algorithmically characterized via the convex-concave based de-anonymization algorithm (CBDA), perfectly finding the optimum of WEMP. Extensive experiments further confirm the effectiveness of CBDA under overlapping communities, in terms of averagely 90% re-identified users in the rare true cross-domain co-author networks when communities overlap densely, and roughly 70% enhanced re-identification ratio compared to non-overlapping cases.<br />Comment: The 9-page version of this paper was accepted by IEEE International Conference on Computer Communication (INFOCOM), Honolulu, USA, Apr. 15th-19th, 2018. (Acceptance Rate 19.2%, 309/1,606)

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1712.04282
Document Type :
Working Paper