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Novel assessment method for accessing private data in social network security services

机译:社交网络安全服务中访问私有数据的新评估方法

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摘要

Social network services (SNSs) have become one of the core Internet-based application services in recent years. Through SNSs, diverse kinds of private data are shared with users' friends and SNS plug-in applications. However, these data can be exposed via abnormal private data access. For example, the addition of fake friends to a user's account is one approach to gain access to a private user's data. Private user data can be protected from being accessed by using an automated method to assess information. This paper proposes a method that evaluates private data accesses for social network security. By defining normal private data access patterns in advance, abnormal private data access patterns can be exposed. Normal private data access patterns are generated by analyzing all of the consecutive private data accesses of users based on Bayesian probability. We have proven the effectiveness of our approach by conducting experiments where the private data access signals of Twitter accounts were collected and analyzed.
机译:近年来,社交网络服务(SNS)已成为基于Internet的核心应用程序服务之一。通过SNS,可以与用户的朋友和SNS插件应用程序共享各种私有数据。但是,可以通过异常的私有数据访问来暴露这些数据。例如,在用户帐户中添加伪造的朋友是一种访问私有用户数据的方法。通过使用自动化的方法来评估信息,可以防止私人用户数据被访问。本文提出了一种评估社交网络安全性的私有数据访问的方法。通过预先定义正常的私有数据访问模式,可以暴露异常的私有数据访问模式。通过基于贝叶斯概率分析用户的所有连续私有数据访问来生成正常私有数据访问模式。通过进行实验,收集并分析Twitter帐户的私有数据访问信号,我们证明了该方法的有效性。

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