Structural Diversity for Resisting Community Identification in Published Social Networks
Chih-Hua Tai, Philip S. Yu, De-Nian Yang, Ming-Syan Chen

TL;DR
This paper introduces the concept of structural diversity to protect community identities in social networks, proposing a $k$-Structural Diversity Anonymization method with optimal and heuristic solutions, validated on real datasets.
Contribution
It presents a novel privacy scheme addressing community identification, with an integer programming model and scalable heuristics for effective anonymization.
Findings
Effective anonymization of community identities demonstrated.
Scalable heuristics perform well on large datasets.
Proposed methods enhance privacy protection in social networks.
Abstract
As an increasing number of social networking data is published and shared for commercial and research purposes, privacy issues about the individuals in social networks have become serious concerns. Vertex identification, which identifies a particular user from a network based on background knowledge such as vertex degree, is one of the most important problems that has been addressed. In reality, however, each individual in a social network is inclined to be associated with not only a vertex identity but also a community identity, which can represent the personal privacy information sensitive to the public, such as political party affiliation. This paper first addresses the new privacy issue, referred to as community identification, by showing that the community identity of a victim can still be inferred even though the social network is protected by existing anonymity schemes. For this…
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Taxonomy
TopicsPrivacy-Preserving Technologies in Data · Privacy, Security, and Data Protection · Internet Traffic Analysis and Secure E-voting
