社交网络隐私设置的PViz理解工具

A. Mazzia, K. LeFevre, Eytan Adar
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引用次数: 144

摘要

在社交网络中,用户对隐私和可见性的心理模型通常涉及他们本地朋友网络中的子群体。许多社交网站已经开始构建支持分组的界面,比如Facebook的列表和“智能列表”,以及Google+的“圈子”。然而,现有的政策理解工具,如Facebook的受众视图,并不符合这种思维模式。在本文中,我们介绍了PViz,这是一个接口和系统,它更直接地对应于用户如何建模组和应用于其网络的隐私策略。PViz允许用户根据自动构建的、自然的朋友子分组,在不同的粒度级别上了解她的个人资料的可见性。由于用户必须能够识别和区分自动构建的组,因此我们还解决了生成有效组标签的重要子问题。我们进行了广泛的用户研究,将PViz与当前的政策理解工具(Facebook的受众视图和自定义设置页面)进行了比较。我们的研究表明,PViz在处理简单任务时与Audience View相当,并且在处理复杂的、基于组的任务时提供了显著的改进,尽管需要用户适应新工具。利用来自用户研究的反馈,我们进一步迭代了我们的设计,构建了PViz 2.0,并进行了后续研究来评估我们的改进。
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The PViz comprehension tool for social network privacy settings
Users' mental models of privacy and visibility in social networks often involve subgroups within their local networks of friends. Many social networking sites have begun building interfaces to support grouping, like Facebook's lists and "Smart Lists," and Google+'s "Circles." However, existing policy comprehension tools, such as Facebook's Audience View, are not aligned with this mental model. In this paper, we introduce PViz, an interface and system that corresponds more directly with how users model groups and privacy policies applied to their networks. PViz allows the user to understand the visibility of her profile according to automatically-constructed, natural sub-groupings of friends, and at different levels of granularity. Because the user must be able to identify and distinguish automatically-constructed groups, we also address the important sub-problem of producing effective group labels. We conducted an extensive user study comparing PViz to current policy comprehension tools (Facebook's Audience View and Custom Settings page). Our study revealed that PViz was comparable to Audience View for simple tasks, and provided a significant improvement for complex, group-based tasks, despite requiring users to adapt to a new tool. Utilizing feedback from the user study, we further iterated on our design, constructing PViz 2.0, and conducted a follow-up study to evaluate our refinements.
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