使用RDF/RDFS和RBAC实现知识级隐私和安全

R. Saripalle, A. D. L. R. Algarin, Timoteus B. Ziminski
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引用次数: 6

摘要

信息隐私和安全在处理敏感信息的领域起着重要作用,例如罕见疾病的案例研究。目前,访问任何敏感信息的安全性是由用户/系统级别的各种机制提供的,采用访问控制模型,如基于角色的访问控制。然而,这些方法在知识层面上忽略了安全性,这可能是不充分的。例如,在医疗保健领域,基于本体的信息提取用于从敏感的结构化/非结构化数据源中提取医学知识。这些信息提取系统作用于敏感数据源,这些数据源根据用户、上下文和权限在系统级别上受到保护,以防止未经授权的访问,但是可以从这些数据源中提取的知识却没有。在本文中,我们通过提出一个模型来处理知识级别的安全性或访问控制,通过利用RBAC模型的知识来源(目前主要关注RDF)来加强知识安全性/访问。该模型通过对知识源的二进制权限对知识进行过滤,为每个用户提供对知识源的不同视图。
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Towards knowledge level privacy and security using RDF/RDFS and RBAC
Information privacy and security plays a major role in domains where sensitive information is handled, such as case studies of rare diseases. Currently, security for accessing any sensitive information is provided by various mechanisms at the user/system level by employing access control models such as Role Based Access Control. However, these approaches leave security at the knowledge level unattended, which can be inadequate. For example, in healthcare, ontology-based information extraction is employed for extracting medical knowledge from sensitive structured/unstructured data sources. These information extraction systems act on sensitive data sources which are protected against unauthorized access at the system level based on the user, context and permissions, but the knowledge that can be extracted from these sources is not. In this paper we tackle the security or access control at the knowledge level by presenting a model, to enforce knowledge security/access by leveraging knowledge sources (currently focused on RDF) with the RBAC model. The developed model filters out knowledge by means of binary permissions on the knowledge source, providing each user with a different view of the knowledge source.
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