DeSAN: De-anonymization against Background Knowledge in Social Networks

Nidhi Desai, M. Das
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引用次数: 4

Abstract

Social network de-anonymization is a challenging research problem. Gigantic volumes of social network data get collected by third-party applications to mine knowledge for devising government policies, business decisions, health records, and many more. Social network data is vulnerable to privacy leakage due to the presence of sensitive information. Furthermore, attackers knowledge and their manipulation capabilities have also expanded in multi-folds. As a result, modelling the attacker’s knowledge helps design a practical privacy model that could overcome attackers capabilities. Semantic knowledge has the potential to disclose privacy where the information is imprecise and inaccurate. This paper proposes a deanonymization technique, DeSAN, against imprecise and inaccurate attacker knowledge. The proposed technique assumes the attacker’s knowledge, comprehensive and realistic. We have implemented the proposed DeSAN technique on a real social dataset, which exhibits encouraging result in terms of deanonymization accuracy.
DeSAN:社交网络背景知识下的去匿名化
社交网络去匿名化是一个具有挑战性的研究问题。第三方应用程序收集了大量的社交网络数据,以挖掘知识,用于制定政府政策、商业决策、健康记录等。由于存在敏感信息,社交网络数据容易受到隐私泄露的影响。此外,攻击者的知识和操作能力也得到了多重扩展。因此,对攻击者的知识进行建模有助于设计一个实用的隐私模型,该模型可以克服攻击者的能力。语义知识有可能在信息不精确和不准确的情况下泄露隐私。本文提出了一种针对不精确和不准确攻击者知识的去匿名化技术——DeSAN。提出的技术假设攻击者的知识,全面和现实。我们已经在一个真实的社交数据集上实现了所提出的DeSAN技术,在去匿名化准确性方面显示出令人鼓舞的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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