学习访问控制策略的难度

Xiaomeng Lei, Mahesh V. Tripunitara
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引用次数: 0

摘要

学习访问控制策略的问题越来越受到人们的关注。我们通过提出和解决有关计算硬度的有意义的问题,为这个问题的基础做出了贡献。我们的工作涉及在文献中三个不同模型的背景下学习访问控制策略:访问矩阵和基于角色和关系的访问控制(分别为RBAC和ReBAC)。我们的基本理论是公认的“可能近似正确”(PAC)概念,并对我们的设置进行了仔细的扩展。在我们的设置中提供的数据或示例、学习算法是与访问强制相关的,这是决定访问资源请求的过程。对于访问矩阵,我们提出了一个在计算上很容易的学习问题,而另一个在计算上很困难。我们对前一种结果进行了推广,从而为建立其他易于计算的问题提供了充分条件。以这些结果为基础,我们考虑了RBAC背景下的五个学习问题,其中两个问题的计算难度很大。最后,我们考虑了ReBAC背景下的四个学习问题,所有这些问题都证明在计算上很容易。对于一个计算容易的问题的每一个证明都是建设性的,因为我们为这个问题提出了一个学习算法,这个算法是有效的,而且可能是近似正确的。因此,我们的工作在访问控制的一个重要的新兴方面的基础上做出了贡献,因此,信息安全。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Hardness of Learning Access Control Policies
The problem of learning access control policies is receiving increasing attention in research. We contribute to the foundations of this problem by posing and addressing meaningful questions on computational hardness. Our work addresses learning access control policies in the context of three different models from the literature: the access matrix, and Role- and Relationship-Based Access Control (RBAC and ReBAC, respectively). Our underlying theory is the well-established notion of Probably Approximately Correct (PAC), with careful extensions for our setting. The data, or examples, a learning algorithm is provided in our setup is that related to access enforcement, which is the process by which a request for access to a resource is decided. For the access matrix, we pose a learning problem that turns out to be computationally easy, and another that we prove is computationally hard. We generalize the former result so we have a sufficient condition for establishing other problems to be computationally easy. With these results as the basis, we consider five learning problems in the context of RBAC, two of which turn out to be computationally hard. Finally, we consider four learning problems in the context of ReBAC, all of which turn out to be computationally easy. Every proof for a problem that is computationally easy is constructive, in that we propose a learning algorithm for the problem that is efficient, and probably, approximately correct. As such, our work makes contributions at the foundations of an important, emerging aspect of access control, and thereby, information security.
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