A Semi-Automated Methodology for Extracting Access Control Rules from the European Data Protection Directive

K. Fatema, C. Debruyne, D. Lewis, D. O’Sullivan, J. Morrison, Abdullah-Al Mazed
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引用次数: 11

Abstract

Handling personal data in a legally compliant way is an important factor for ensuring the trustworthiness of a service provider. The EU data protection directive (EU DPD) is built in such a way that the outcomes of rules are subject to explanations, contexts with dependencies, and human interpretation. Therefore, the process of obtaining deterministic and formal rules in policy languages from the EU DPD is difficult to fully automate. To tackle this problem, we demonstrate in this paper the use of a Controlled Natural Language (CNL) to encode the rules of the EU DPD, in a manner that can be automatically converted into the policy languages XACML and PERMIS. We also show that forming machine executable rules automatically from the controlled natural language grammar not only has the benefit of ensuring the correctness of those rules but also has potential of making the overall process more efficient.
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从欧洲数据保护指令中提取访问控制规则的半自动化方法
以符合法律规定的方式处理个人资料,是确保服务提供者值得信赖的重要因素。欧盟数据保护指令(EU DPD)是以这样一种方式构建的,即规则的结果受制于解释、具有依赖关系的上下文和人为解释。因此,从EU DPD中获得政策语言的确定性和形式化规则的过程很难完全自动化。为了解决这个问题,我们在本文中演示了使用受控自然语言(CNL)来编码EU DPD的规则,这种方式可以自动转换为策略语言XACML和PERMIS。我们还表明,从受控的自然语言语法自动形成机器可执行的规则不仅有利于确保这些规则的正确性,而且有可能使整个过程更有效率。
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