挖掘隐私设置以找到社交网络服务的最佳隐私效用权衡

Shumin Guo, Keke Chen
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引用次数: 29

摘要

隐私一直是社交网络服务(SNS)用户关心的一大问题。在最近对隐私保护的批评中,大多数社交网站现在都提供了很好的隐私控制,允许用户为几乎每个个人资料项目设置可见性级别。然而,这也给用户带来了许多困难。首先,为了提高社交网络的效用,SNS提供商通常将大多数项目默认设置为最高可见性,这可能与用户的意图相冲突。对于用户来说,将数十个隐私设置微调到用户想要的设置通常是非常困难的。其次,调优隐私设置涉及隐私和实用之间的复杂权衡。当你关闭一个项目的可见性以保护你的隐私时,该项目的社会效用也被关闭了。对于用户来说,在每个隐私设置的隐私和实用程序之间进行权衡是一项挑战。我们提出了一个框架,使用户可以方便地将隐私设置调整为用户期望的隐私级别和社会效用。它挖掘社交网络(如Facebook)中大量用户的隐私设置,以生成隐私关注水平和效用偏好水平的潜在特征模型。开发了一种权衡算法,用于帮助用户找到特定隐私关注级别和个性化实用程序偏好的最佳隐私设置。我们抓取了大量的Facebook账户,并通过一种新颖的方法获得了隐私设置。这些隐私设置数据用于验证和展示所建议的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Mining Privacy Settings to Find Optimal Privacy-Utility Tradeoffs for Social Network Services
Privacy has been a big concern for users of social network services (SNS). On recent criticism about privacy protection, most SNS now provide fine privacy controls, allowing users to set visibility levels for almost every profile item. However, this also creates a number of difficulties for users. First, SNS providers often set most items by default to the highest visibility to improve the utility of social network, which may conflict with users' intention. It is often formidable for a user to fine-tune tens of privacy settings towards the user desired settings. Second, tuning privacy settings involves an intricate tradeoff between privacy and utility. When you turn off the visibility of one item to protect your privacy, the social utility of that item is turned off as well. It is challenging for users to make a tradeoff between privacy and utility for each privacy setting. We propose a framework for users to conveniently tune the privacy settings towards the user desired privacy level and social utilities. It mines the privacy settings of a large number of users in a SNS, e.g., Facebook, to generate latent trait models for the level of privacy concern and the level of utility preference. A tradeoff algorithm is developed for helping users find the optimal privacy settings for a specified level of privacy concern and a personalized utility preference. We crawl a large number of Facebook accounts and derive the privacy settings with a novel method. These privacy setting data are used to validate and showcase the proposed approach.
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