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Privacy Protection in Social Network Data Disclosure Based on Granular Computing

机译:基于粒化计算的社交网络数据披露隐私保护

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Social network analysis is an important methodology in sociological research. Though social network data is very useful to researchers and policy makers, releasing such data to the public may cause an invasion of privacy. We generalize the techniques for protecting personal privacy in tabulated data, and propose some metrics of anonymity for assessing the risk of breaching confidentiality by disclosing social network data. We assume a situation of data publication, where data is released to the general public. We adopt description logic as the underlying knowledge representation formalism, and consider the metrics of anonymity in open world and closed world contexts respectively.
机译:社会网络分析是社会学研究的重要方法。虽然社交网络数据对研究人员和决策者非常有用,但向公众发布此类数据可能导致隐私入侵。我们概括了在制表数据中保护个人隐私的技术,并提出了一些匿名的指标,以评估通过披露社交网络数据来违反机密性的风险。我们假设数据出版物的情况,其中数据被发布给公众。我们采用描述逻辑作为潜在的知识代表性形式主义,并分别考虑开放世界和封闭世界环境中的匿名度量。

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