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Analyzing and Predicting Privacy Settings in the Social Web

机译:分析和预测社交网络中的隐私设置

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Social networks provide a platform for people to connect and share information and moments of their lives. With the increasing engagement of users in such platforms, the volume of personal information that is exposed online grows accordingly. Due to carelessness, unawareness or difficulties in defining adequate privacy settings, private or sensitive information may be exposed to a wider audience than intended or advisable, potentially with serious problems in the private and professional life of a user. Although these causes usually receive public attention when it involves companies' higher managing staff, athletes, politicians or artists, the general public is also subject to these issues. To address this problem, we envision a mechanism that can suggest users the appropriate privacy setting for their posts taking into account their profiles. In this paper, we present a thorough analysis of privacy settings in Facebook posts and evaluate prediction models that can anticipate the desired privacy settings with high accuracy, making use of the users' previous posts and preferences.
机译:社交网络为人们提供了一个平台,以便连接和分享他们生活的信息和时刻。随着用户在这种平台中越来越多的用户,在线暴露的个人信息的体积相应地增长。由于粗心,在定义充足的隐私环境中,私有或敏感信息可能会暴露于更广泛的观众,而不是预期或可取的,可能对用户的私人和专业生活中的严重问题暴露给更广泛的受众。虽然这些原因通常会在涉及公司更高的管理人员,运动员,政治家或艺术家涉及公众时,虽然公众也受这些问题。为了解决这个问题,我们设想了一种机制,可以建议用户考虑到他们的课程的帖子的适当隐私设置。在本文中,我们在Facebook帖子中对隐私设置进行了全面的分析,并评估了预测的预测模型,以预测高精度,利用用户之前的帖子和偏好。

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