基于个体属性和级联影响能力的社交网络隐私保护方法

Jing Zhang, Sitong Shi, Cai-Jie Weng, Li Xu
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引用次数: 3

摘要

用户可以通过在社交网络中共享信息来获得智能服务。大数据技术可以从这些信息中发现潜在的好处。然而,同时也引起了严格的安全问题。公共数据可能被对手利用,这将带来可怕的后果。本文研究了隐私保护环境下的影响力最大化问题,旨在寻找能够使影响力传播最大化和隐私泄露最小化的安全用户子集。首先,为了估计每个用户的风险等级,提出了基于贝叶斯的个人隐私风险评价模型,对个人风险等级进行排序。其次,为了衡量每个用户的影响能力,设计了一个级联影响能力评估模型,对好友的影响能力等级进行排序。最后,基于这两个因素,设计了一种具有攻击约束的影响最大化问题的隐私保护方法。此外,对比实验表明,该方法能够有效地实现影响最大化和隐私泄露最小化的目标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Individual Attribute and Cascade Influence Capability-Based Privacy Protection Method in Social Networks
Users can obtain intelligent services by sharing information in social networks. Big data technologies can discover underlying benefits from this information. However, stringent security concern is raised at the same time. The public data can be utilized by adversaries, which will bring dire consequences. In this paper, the influence maximization problem is investigated in a privacy protection environment, which aims to find a subset of secure users that can make the spread of influence maximization and privacy disclosure minimization. At first, in order to estimate the risk level for each user, a Bayesian-based individual privacy risk evaluation model is proposed to rank the individual risk levels. Secondly, as the aim is to measure the influence capability for each user, a cascade influence capability evaluation model is designed to rank the friend influence capability levels. Finally, based on these two factors, a privacy protection method is designed for solving the influence maximization with attack constraint problem. In addition, the comparison experiments show that our method can achieve the goal of influence maximization and privacy disclosure minimization efficiently.
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