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Agent-Based Semantic Role Mining for Intelligent Access Control in Multi-Domain Collaborative Applications of Smart Cities

机译:基于代理的语义角色挖掘智能城市多域协同应用中的智能访问控制

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摘要

Significance and popularity of Role-Based Access Control (RBAC) is inevitable; however, its application is highly challenging in multi-domain collaborative smart city environments. The reason is its limitations in adapting the dynamically changing information of users, tasks, access policies and resources in such applications. It also does not incorporate semantically meaningful business roles, which could have a diverse impact upon access decisions in such multi-domain collaborative business environments. We propose an Intelligent Role-based Access Control (I-RBAC) model that uses intelligent software agents for achieving intelligent access control in such highly dynamic multi-domain environments. The novelty of this model lies in using a core I-RBAC ontology that is developed using real-world semantic business roles as occupational roles provided by Standard Occupational Classification (SOC), USA. It contains around 1400 business roles, from nearly all domains, along with their detailed task descriptions as well as hierarchical relationships among them. The semantic role mining process is performed through intelligent agents that use word embedding and a bidirectional LSTM deep neural network for automated population of organizational ontology from its unstructured text policy and, subsequently, matching this ontology with core I-RBAC ontology to extract unified business roles. The experimentation was performed on a large number of collaboration case scenarios of five multi-domain organizations and promising results were obtained regarding the accuracy of automatically derived RDF triples (Subject, Predicate, Object) from organizational text policies as well as the accuracy of extracted semantically meaningful roles.
机译:基于角色的访问控制(RBAC)的意义和普及是不可避免的;然而,其应用在多域协同智能城市环境中具有高度挑战性。原因是它在调整此类应用程序中调整用户,任务,访问策略和资源的动态变化的信息的限制。它还不会包含语义有意义的业务角色,这可能对访问此类多域协同商业环境中的决策可能产生多种影响。我们提出了一种智能的基于角色的访问控制(I-RBAC)模型,该模型使用智能软件代理来实现这种高动态的多域环境中的智能访问控制。该模型的新颖性在于使用使用现实世界语义业务角色开发的核心I-RBAC本体,作为由美国标准职业分类(SoC)提供的职业角色。它包含大约1400个业务角色,从几乎所有域名以及他们的详细任务描述以及它们之间的分层关系。语义角色挖掘过程是通过使用Word Embedding和双向LSTM深神经网络的智能代理进行的,用于从其非结构化的文本策略自动组织本体的自动化,随后与核心I-RBAC本体与核心I-RBAC本体匹配以提取统一业务角色。对五个多域组织的大量协作案例进行了实验,并获得了来自组织文本政策的自动导出的RDF三元组(主题,谓词,对象)的准确性的有希望的结果以及语义上提取的准确性有意义的角色。

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