ABAC策略属性提取的深度学习方法

Manar Alohaly, Hassan Takabi, Eduardo Blanco
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引用次数: 28

摘要

美国国家标准与技术研究所(NIST)已经将自然语言策略确定为策略的首选表达,并隐式地要求将ABAC自然语言访问控制策略(NLACP)自动翻译为机器可读的形式。实现这种自动化的一个重要步骤是从nlacp中自动提取ABAC属性,这是本文的重点。因此,我们提出了一个问题:我们如何从自然语言文档中自动提取属性?我们对这个问题提出的解决方案是建立在自然语言处理和机器学习技术的最新进展之上的。对于这种解决方案,缺乏适当的数据通常会造成瓶颈。因此,我们将这项工作的主要贡献解耦为:(1)开发一个实用的框架来从自然语言工件中提取ABAC属性,以及(2)生成一组现实的综合自然语言访问控制策略(nlacp)来评估所提出的框架。实验结果对潜在的自动化感兴趣的任务很有希望。使用卷积神经网络(CNN),我们在提取主题属性时平均获得了0.96分的f1分,在从自然语言访问控制策略中提取对象属性时平均获得了0.91分。
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A Deep Learning Approach for Extracting Attributes of ABAC Policies
The National Institute of Standards and Technology (NIST) has identified natural language policies as the preferred expression of policy and implicitly called for an automated translation of ABAC natural language access control policy (NLACP) to a machine-readable form. An essential step towards this automation is to automate the extraction of ABAC attributes from NLACPs, which is the focus of this paper. We, therefore, raise the question of: how can we automate the task of attributes extraction from natural language documents? Our proposed solution to this question is built upon the recent advancements in natural language processing and machine learning techniques. For such a solution, the lack of appropriate data often poses a bottleneck. Therefore, we decouple the primary contributions of this work into: (1) developing a practical framework to extract ABAC attributes from natural language artifacts, and (2) generating a set of realistic synthetic natural language access control policies (NLACPs) to evaluate the proposed framework. The experimental results are promising with regard to the potential automation of the task of interest. Using a convolutional neural network (CNN), we achieved - in average - an F1-score of 0.96 when extracting the attributes of subjects, and 0.91 when extracting the objects' attributes from natural language access control policies.
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