基于深度学习的访问控制

M. N. Nobi, R. Krishnan, Yufei Huang, Mehrnoosh Shakarami, R. Sandhu
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引用次数: 20

摘要

当前访问控制方法的一个共同特点是需要设计抽象和直观的访问控制模型。这需要根据具体情况以角色(RBAC)、属性(ABAC)或关系(ReBAC)的形式设计访问控制信息,然后设计访问控制规则。该框架有其优点,但在动态、复杂和大规模的现代系统环境中存在明显的局限性,因此很难为人类管理员在系统中维护准确的访问控制状态。本文提出了基于深度学习的访问控制(DLBAC),利用深度学习技术的重大进展作为该问题的潜在解决方案。我们设想DLBAC可以补充,从长远来看,有潜力甚至取代经典的访问控制模型,用神经网络减少访问控制模型工程和更新的负担。在不失一般性的前提下,我们使用真实世界和合成数据集对候选DLBAC模型DLBAC_alpha进行了彻底的研究。我们通过解决与准确性、通用性和可解释性相关的问题来证明所提出方法的可行性。我们还讨论了挑战和未来的研究方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Toward Deep Learning Based Access Control
A common trait of current access control approaches is the challenging need to engineer abstract and intuitive access control models. This entails designing access control information in the form of roles (RBAC), attributes (ABAC), or relationships (ReBAC) as the case may be, and subsequently, designing access control rules. This framework has its benefits but has significant limitations in the context of modern systems that are dynamic, complex, and large-scale, due to which it is difficult to maintain an accurate access control state in the system for a human administrator. This paper proposes Deep Learning Based Access Control (DLBAC) by leveraging significant advances in deep learning technology as a potential solution to this problem. We envision that DLBAC could complement and, in the long-term, has the potential to even replace, classical access control models with a neural network that reduces the burden of access control model engineering and updates. Without loss of generality, we conduct a thorough investigation of a candidate DLBAC model, called DLBAC_alpha, using both real-world and synthetic datasets. We demonstrate the feasibility of the proposed approach by addressing issues related to accuracy, generalization, and explainability. We also discuss challenges and future research directions.
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