GASNA:社交网络匿名化的贪婪算法

Mayank Singh, Shishodia Sumeet, Jain B K Tripathy
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引用次数: 3

摘要

事实证明,社交网络在数字媒体中的普及是卓有成效的,但这种普及伴随着用户隐私担忧。社交网络数据以各种方式发布,在发布的数据中保护个人隐私成为一个重要问题。已经为关系数据中的隐私保护开发了几种算法,但这些算法不能直接应用于社交网络,因为这里的节点具有结构属性和标签。本文提出了一种实现社交网络数据k-匿名和l-多样性的算法,该算法提供了结构匿名和敏感属性保护。该算法采用了新的边缘相加技术,本文也对这些技术进行了介绍。我们还提出了部分匿名的概念,以降低bbbb1的匿名化成本。实证研究表明,与该领域先前提出的其他算法相比,我们的算法对社交网络数据匿名化所需的边缘添加数量显著减少,运行时间显著缩短。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
GASNA: Greedy algorithm for social network anonymization
The proliferation of social networks in digital media has proved to be fruitful, but this rise in popularity is accompanied by user privacy concerns. Social network data has been published in various ways and preserving the privacy of individuals in the published data has become an important concern. Several algorithms have been developed for privacy preservation in relational data, but these algorithms cannot be applied directly to social networks as the nodes here have structural properties along with labels. In this paper, we propose an algorithm to achieve k-anonymity and l-diversity in social network data which provides structural anonymity along with sensitive attribute protection. The proposed algorithm uses novel edge addition techniques which are also presented in this paper. We also propose a concept of partial anonymity to reduce anonymization cost for d>1. The empirical study shows that our algorithm requires significantly less number of edge additions for anonymization of social network data and has a substantially lower running time than the other algorithms previously proposed in the field.
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