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Protection of shared data among multiple users for online social networks

机译:保护多个用户之间的共享数据进行在线社交网络

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Online social networks are now a popular way for users to connect, express themselves, and share content. Users in today's online social networks often post a profile, consisting of attributes like geographic location, interests, and schools attended. Such profile information is used on the sites as a basis for grouping users, for sharing content, and for suggesting users who may benefit from interaction. Online social networks have increased become a de facto portal for billions of regular users like Face book Twitter Linked In world wide. These OSNs offer attractive means for Relations and sharing of information, but it also causes number of problems which are private to users. Suppose online social network allow users to restrict access to share data, at present there is no effective mechanism to provide privacy concerns over confidential data associated with many number of users. To share the profile, relation and content our analysis presents an approach to protect the shared data associated with multiple users in social networks. To capture the essence of multiparty authorization users requirement, along with a multiparty policy specification scheme & enforcement mechanism. Our access control model allows us to Extend the features of traditional mechanisms to perform various tasks such as analysis and design on new model, Comparative study provide usability study and problems in previous and advantages of our method.
机译:在线社交网络现在是用户连接,表达自己和共享内容的流行方式。当今在线社交网络中的用户经常发布个人资料,包括地理位置,兴趣和学校等属性。这些配置文件信息在网站上用作分组用户的基础,以共享内容,并为可能从交互中受益的建议用户。在线社交网络增加了数十亿个普通用户的事实门户,就像脸书Twitter在世界范围内联系在一起。这些OSN提供了有吸引力的关系和分享信息的手段,但它也会导致私人的问题次数。假设在线社交网络允许用户限制访问分享数据,目前没有有效的机制提供与许多用户相关的机密数据的隐私问题。要分享配置文件,所关联和内容我们的分析介绍了一种保护与社交网络中多个用户相关联的共享数据的方法。捕捉多方授权用户要求的本质,以及多党政规范方案和执法机制。我们的访问控制模型使我们能够扩展传统机制的特征,以执行新模型的分析和设计等各种任务,比较研究提供了我们方法的先前和优势中的可用性研究和问题。

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