A social network is a platform that users can share data through the internet. With the ever-increasing intertwining of social networks and daily existence, the accumulation of personal privacy information is steadily mounting. However, the exposure of such data could lead to disastrous consequences. To mitigate this problem, an anonymous group structure algorithm based on community structure is proposed in this article. At first, a privacy protection scheme model is designed, which can be adjusted dynamically according to the network size and user demand. Secondly, based on the community characteristics, the concept of fuzzy subordinate degree is introduced, then three kinds of community structure mining algorithms are designed: the fuzzy subordinate degree-based algorithm, the improved Kernighan-Lin algorithm, and the enhanced label propagation algorithm. At last, according to the level of privacy, different anonymous graph construction algorithms based on community structure are designed. Furthermore, the simulation experiments show that the three methods of community division can divide the network community effectively. They can be utilized at different privacy levels. In addition, the scheme can satisfy the privacy requirement with minor changes.
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机译:社交网络是用户可以通过 Internet 共享数据的平台。随着社交网络与日常生活的日益交织,个人隐私信息的积累正在稳步增加。但是,此类数据的泄露可能会导致灾难性的后果。为了缓解这一问题,本文提出了一种基于社区结构的匿名群体结构算法。首先,设计了一个隐私保护方案模型,该模型可以根据网络规模和用户需求进行动态调整。其次,基于社区特征,引入模糊从属度的概念,然后设计了三种社区结构挖掘算法:模糊从属度基于算法、改进的Kernighan-Lin算法和增强标签传播算法。最后,根据隐私级别,设计了基于社区结构的不同匿名图构造算法。此外,仿真实验表明,3种社区划分方法可以有效地划分网络社区。它们可以在不同的隐私级别使用。此外,该方案可以通过微小的更改来满足隐私要求。
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