PRIVEE:一种面向开放数据隐私风险检测的可视化分析工作流。

Kaustav Bhattacharjee, Akm Islam, Jaideep Vaidya, Aritra Dasgupta
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引用次数: 4

摘要

包含个人信息的开放数据集即使匿名也容易受到对抗性攻击。通过对具有共享属性的多个数据集执行低成本连接,开放数据门户的恶意用户可能会访问侵犯个人隐私的信息。然而,开放数据集主要是使用“发布-忘记”模型发布的,因此数据所有者和保管人很少或根本没有意识到这些隐私风险。我们通过开发可视化分析解决方案来解决这一关键差距,该解决方案使数据防御者能够了解本地可接合数据社区的披露风险。该解决方案是通过与数据隐私研究人员的设计研究得出的,我们最初扮演红队的角色,参与基于隐私攻击场景的道德数据黑客攻击练习。我们利用这个问题和领域特征来开发一套可视化分析干预措施作为防御机制,并在PRIVEE中实现它们,PRIVEE是一种可视化风险检查工作流,可以作为数据防御者的主动监视器。PRIVEE结合了风险评分和相关的交互式可视化,让数据防御者可以探索易受攻击的连接,并在多个数据粒度级别上解释风险。通过与数据隐私专家的两个案例研究,我们演示了PRIVEE如何帮助模拟攻击策略并诊断披露风险。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
PRIVEE: A Visual Analytic Workflow for Proactive Privacy Risk Inspection of Open Data.

Open data sets that contain personal information are susceptible to adversarial attacks even when anonymized. By performing low-cost joins on multiple datasets with shared attributes, malicious users of open data portals might get access to information that violates individuals' privacy. However, open data sets are primarily published using a release-and-forget model, whereby data owners and custodians have little to no cognizance of these privacy risks. We address this critical gap by developing a visual analytic solution that enables data defenders to gain awareness about the disclosure risks in local, joinable data neighborhoods. The solution is derived through a design study with data privacy researchers, where we initially play the role of a red team and engage in an ethical data hacking exercise based on privacy attack scenarios. We use this problem and domain characterization to develop a set of visual analytic interventions as a defense mechanism and realize them in PRIVEE, a visual risk inspection workflow that acts as a proactive monitor for data defenders. PRIVEE uses a combination of risk scores and associated interactive visualizations to let data defenders explore vulnerable joins and interpret risks at multiple levels of data granularity. We demonstrate how PRIVEE can help emulate the attack strategies and diagnose disclosure risks through two case studies with data privacy experts.

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