PAMMELA:使用机器学习的政策管理方法。

Varun Gumma, Barsha Mitra, Soumyadeep Dey, Pratik Shashikantbhai Patel, Sourabh Suman, Saptarshi Das, Jaideep Vaidya
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引用次数: 5

摘要

近年来,基于属性的访问控制(ABAC)在动态和协作环境中变得非常流行和有效。ABAC的实现需要创建一组基于属性的规则,这些规则累积起来形成策略。从头开始设计ABAC策略需要系统管理员付出大量的努力。此外,组织变化可能需要在已经部署的策略中包含新规则。在这种情况下,重新挖掘整个ABAC策略需要大量的时间和管理工作。相反,最好是增量地增强策略。在本文中,我们提出了PAMMELA,一种使用机器学习的策略管理方法,以帮助系统管理员创建新的ABAC策略以及扩展现有策略。PAMMELA可以通过学习当前在类似组织中执行的策略的规则来为组织生成新的策略。对于策略增强,根据从现有规则中收集的知识推断出新的规则。详细的实验评估表明,该方法是高效的。
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PAMMELA: Policy Administration Methodology using Machine Learning.

In recent years, Attribute-Based Access Control (ABAC) has become quite popular and effective for enforcing access control in dynamic and collaborative environments. Implementation of ABAC requires the creation of a set of attribute-based rules which cumulatively form a policy. Designing an ABAC policy ab initio demands a substantial amount of effort from the system administrator. Moreover, organizational changes may necessitate the inclusion of new rules in an already deployed policy. In such a case, re-mining the entire ABAC policy requires a considerable amount of time and administrative effort. Instead, it is better to incrementally augment the policy. In this paper, we propose PAMMELA, a Policy Administration Methodology using Machine Learning to assist system administrators in creating new ABAC policies as well as augmenting existing policies. PAMMELA can generate a new policy for an organization by learning the rules of a policy currently enforced in a similar organization. For policy augmentation, new rules are inferred based on the knowledge gathered from the existing rules. A detailed experimental evaluation shows that the proposed approach is both efficient and effective.

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