Efficient and Extensible Policy Mining for Relationship-Based Access Control

Thang Bui, S. Stoller, Hieu Le
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引用次数: 14

Abstract

Relationship-based access control (ReBAC) is a flexible and expressive framework that allows policies to be expressed in terms of chains of relationship between entities as well as attributes of entities. ReBAC policy mining algorithms have a potential to significantly reduce the cost of migration from legacy access control systems to ReBAC, by partially automating the development of a ReBAC policy. Existing ReBAC policy mining algorithms support a policy language with a limited set of operators; this limits their applicability. This paper presents a ReBAC policy mining algorithm designed to be both (1) easily extensible (to support additional policy language features) and (2) scalable. The algorithm is based on Bui et al.'s evolutionary algorithm for ReBAC policy mining algorithm. First, we simplify their algorithm, in order to make it easier to extend and provide a methodology that extends it to handle new policy language features. However, extending the policy language increases the search space of candidate policies explored by the evolutionary algorithm, thus causes longer running time and/or worse results. To address the problem, we enhance the algorithm with a feature selection phase. The enhancement utilizes a neural network to identify useful features. We use the result of feature selection to reduce the evolutionary algorithm's search space. The new algorithm is easy to extend and, as shown by our experiments, is more efficient and produces better policies.
基于关系访问控制的高效可扩展策略挖掘
基于关系的访问控制(ReBAC)是一种灵活且富有表现力的框架,它允许根据实体之间的关系链以及实体的属性来表示策略。通过部分自动化ReBAC策略的开发,ReBAC策略挖掘算法有可能显著降低从传统访问控制系统迁移到ReBAC的成本。现有的ReBAC策略挖掘算法支持具有有限操作符集的策略语言;这限制了它们的适用性。本文提出了一种ReBAC策略挖掘算法,其设计具有以下两个特点:(1)易于扩展(以支持额外的策略语言特性)和(2)可伸缩。该算法基于Bui等人的ReBAC策略挖掘算法的进化算法。首先,我们简化了它们的算法,使其更容易扩展,并提供了一种方法来扩展它以处理新的策略语言特性。然而,扩展策略语言增加了进化算法探索的候选策略的搜索空间,从而导致运行时间更长和/或结果更差。为了解决这个问题,我们用特征选择阶段来增强算法。增强利用神经网络来识别有用的特征。我们利用特征选择的结果来减小进化算法的搜索空间。新算法易于扩展,实验结果表明,该算法效率更高,策略效果更好。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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