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Detecting and predicting privacy violations in online social networks

机译:检测和预测在线社交网络中的隐私侵害

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摘要

Online social networks have become an essential part of social and work life. They enable users to share, discuss, and create content together with various others. Obviously, not all content is meant to be seen by all. It is extremely important to ensure that content is only shown to those that are approved by the content's owner so that the owner's privacy is preserved. Generally, online social networks are promising to preserve privacy through privacy agreements, but still everyday new privacy leakages are taking place. Ideally, online social networks should be able to manage and maintain their agreements through well-founded methods. However, the dynamic nature of the online social networks is making it difficult to keep private information contained. We have developed PROTOSS, a run time tool for detecting and predicting PRivacy viOlaTions in Online Social networks. PROTOSS captures relations among users, their privacy agreements with an online social network operator, as well as domain-based semantic information and rules. It uses model checking to detect if relations among the users will result in the violation of privacy agreements. It can further use the semantic information to infer possible violations that have not been specified by the user explicitly. In addition to detection, PROTOSS can predict possible future violations by feeding in a hypothetical future world state. Through a running example, we show that PROTOSS can detect and predict subtle leakages, similar to the ones reported in real life examples. We study the performance of our system on the scenario as well as on an existing Facebook dataset.
机译:在线社交网络已成为社交和工作生活的重要组成部分。它们使用户可以与其他各种对象共享,讨论和创建内容。显然,并非所有人都能看到所有内容。确保仅向内容所有者批准的内容显示内容,以保护所有者的隐私,这一点极为重要。通常,在线社交网络有望通过隐私协议来保护隐私,但是每天仍在发生新的隐私泄露事件。理想情况下,在线社交网络应能够通过可靠的方法来管理和维护其协议。然而,在线社交网络的动态性质使得难以保留私人信息。我们已经开发了PROTOSS,这是一种运行时工具,用于检测和预测在线社交网络中的私隐行为。 PROTOSS捕获用户之间的关系,与在线社交网络运营商的隐私协议以及基于域的语义信息和规则。它使用模型检查来检测用户之间的关系是否会导致违反隐私协议。它可以进一步使用语义信息来推断用户未明确指定的可能违规。除了检测之外,PROTOSS还可以通过提供一个假设的未来世界状态来预测将来可能发生的违规情况。通过一个运行中的示例,我们证明PROTOSS可以检测和预测细微的泄漏,类似于真实示例中所报告的泄漏。我们研究了该场景以及现有Facebook数据集上系统的性能。

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