Risk-aware Fine-grained Access Control in Cyber-physical Contexts

Jinxin Liu, Murat Simsek, B. Kantarci, M. Erol-Kantarci, A. Malton, Andrew Walenstein
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引用次数: 2

Abstract

Access to resources by users may need to be granted only upon certain conditions and contexts, perhaps particularly in cyber-physical settings. Unfortunately, creating and modifying context-sensitive access control solutions in dynamic environments creates ongoing challenges to manage the authorization contexts. This article proposes RASA, a context-sensitive access authorization approach and mechanism leveraging unsupervised machine learning to automatically infer risk-based authorization decision boundaries. We explore RASA in a healthcare usage environment, wherein cyber and physical conditions create context-specific risks for protecting private health information. The risk levels are associated with access control decisions recommended by a security policy. A coupling method is introduced to track coexistence of the objects within context using frequency and duration of coexistence, and these are clustered to reveal sets of actions with common risk levels; these are used to create authorization decision boundaries. In addition, we propose a method for assessing the risk level and labelling the clusters with respect to their corresponding risk levels. We evaluate the promise of RASA-generated policies against a heuristic rule-based policy. By employing three different coupling features (frequency-based, duration-based, and combined features), the decisions of the unsupervised method and that of the policy are more than 99% consistent.
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网络物理环境中风险感知的细粒度访问控制
用户对资源的访问可能只需要在某些条件和上下文中被授予,可能特别是在网络物理设置中。不幸的是,在动态环境中创建和修改上下文敏感的访问控制解决方案会给管理授权上下文带来持续的挑战。本文提出了RASA,一种上下文敏感的访问授权方法和机制,利用无监督机器学习来自动推断基于风险的授权决策边界。我们将探讨医疗保健使用环境中的RASA,其中网络和物理条件为保护私人健康信息创造了特定于环境的风险。风险级别与安全策略推荐的访问控制决策相关联。引入了一种耦合方法,利用共存的频率和持续时间来跟踪上下文中对象的共存,并对这些对象进行聚类以揭示具有共同风险级别的动作集;它们用于创建授权决策边界。此外,我们提出了一种评估风险水平和标记集群相对于其相应的风险水平的方法。我们根据启发式的基于规则的策略来评估rasa生成的策略的承诺。通过采用三种不同的耦合特征(基于频率、基于持续时间和组合特征),无监督方法的决策与策略的决策一致性超过99%。
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