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Access Control Policy Extraction from Unconstrained Natural Language Text

机译:从无限制的自然语言文本访问控制策略提取

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While access control mechanisms have existed in computer systems since the 1960s, modern system developers often fail to ensure appropriate mechanisms are implemented within particular systems. Such failures allow for individuals, both benign and malicious, to view and manipulate information that they should not otherwise be able to access. The goal of our research is to help developers improve security by extracting the access control policies implicitly and explicitly defined in natural language project artifacts. Developers can then verify and implement the extracted access control policies within a system. We propose a machine-learning based process to parse existing, unaltered natural language documents, such as requirement or technical specifications to extract the relevant subjects, actions, and resources for an access control policy. To evaluate our approach, we analyzed a public requirements specification. We had a precision of 0.87 with a recall of 0.91 in classifying sentences as access control or not. Through a bootstrapping process utilizing dependency graphs, we correctly identified the subjects, actions, and objects elements of the access control policies with a precision of 0.46 and a recall of 0.54.
机译:虽然自20世纪60年代以来的计算机系统中存在访问控制机制,但现代系统开发人员通常无法确保在特定系统中实现适当的机制。此类失败允许个人,良性和恶意,查看和操纵它们不应该进入的信息。我们的研究的目标是通过在自然语言项目工件中icliCyLylication地和明确地定义,帮助开发人员通过提取访问控制策略来提高安全性。然后,开发人员可以在系统中验证并实现提取的访问控制策略。我们提出了一种基于机器学习的进程来解析现有的,未妨碍的自然语言文档,例如提取访问控制策略的相关主题,操作和资源的要求或技术规范。为了评估我们的方法,我们分析了公共需求规范。我们的精确度为0.87,召回0.91在分类句子中作为访问控制。通过利用依赖图的引导过程,我们正确地识别了访问控制策略的主题,操作和对象元素,精度为0.46,召回0.54。

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