防止访问控制中的信息推断

F. Paci, Nicola Zannone
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引用次数: 12

摘要

社交网络、个人设备和云计算等技术创新让用户能够在线分享和存储大量个人数据。在线分享个人数据引起了用户的严重隐私担忧,他们觉得自己无法完全控制自己的数据。通常提出的减轻用户隐私问题的解决方案是让他们指定反映其隐私约束的访问控制策略。然而,现有的访问控制方法通常会产生限制性太强或允许敏感信息泄露的策略。本文提出了一种降低信息泄露风险的访问控制模型。该模型依赖于一个数据模型,该数据模型对领域知识以及数据之间的语义关系进行编码。我们将说明如何在XACML中自动转换访问控制模型和数据模型上的推理。我们评估并比较了我们的模型与现有的访问控制模型在防止敏感信息泄漏方面的有效性和制定策略的效率。评估表明,与现有模型相比,所提出的模型允许定义有效的访问控制策略,从而降低了敏感数据推断的风险,同时减少了用户在策略编写方面的工作量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Preventing Information Inference in Access Control
Technological innovations like social networks, personal devices and cloud computing, allow users to share and store online a huge amount of personal data. Sharing personal data online raises significant privacy concerns for users, who feel that they do not have full control over their data. A solution often proposed to alleviate users' privacy concerns is to let them specify access control policies that reflect their privacy constraints. However, existing approaches to access control often produce policies which either are too restrictive or allow the leakage of sensitive information. In this paper, we present a novel access control model that reduces the risk of information leakage. The model relies on a data model which encodes the domain knowledge along with the semantic relations between data. We illustrate how the access control model and the reasoning over the data model can be automatically translated in XACML. We evaluate and compare our model with existing access control models with respect to its effectiveness in preventing leakage of sensitive information and efficiency in authoring policies. The evaluation shows that the proposed model allows the definition of effective access control policies that mitigate the risks of inference of sensitive data while reducing users' effort in policy authoring compared to existing models.
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