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Scalable non-deterministic clustering-based k-anonymization for rich networks

机译:可扩展的基于非确定性聚类的K-andymendization为丰富的网络

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摘要

In this paper, we tackle the problem of graph anonymization in the context of privacy-preserving social network mining. We present a greedy and non-deterministic algorithm to achieve k-anonymity on labeled and undirected networks. Our work aims to create a scalable algorithm for real-world big networks, which runs in parallel and uses biased randomization for improving the quality of the solutions. We propose new metrics that consider the utility of the clusters from a recommender system point of view. We compare our approach to SaNGreeA, a well-known state-of-the-art algorithm for k-anonymity generalization. Finally, we have performed scalability tests, with up to 160 machines within the Hadoop framework, for anonymizing a real-world dataset with around 830K nodes and 63M relationships, demonstrating our method's utility and practical applicability.
机译:在本文中,我们解决了保留了保护社交网络挖掘的背景下的图表匿名问题。 我们展示了一种贪婪和非确定性算法,实现标记和无向网络上的k-匿名。 我们的工作旨在为真实世界的大网络创建可扩展算法,该算法并行运行并使用偏见随机化来提高解决方案的质量。 我们提出了从推荐系统的角度考虑群集的实用性的新度量。 我们比较我们对Sangreea的方法,是k-匿名概括的众所周知的最先进的算法。 最后,我们已经执行了可扩展性测试,在Hadoop框架内具有最多160台机器,用于匿名一个具有大约830k节点和63米的关系的现实世界数据集,展示了我们的方法的实用性和实际适用性。

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