We present Knowledge Rocks, an implementation strategy and guideline for augmenting visualization systems to knowledge-assisted visualization systems, as defined by the KAVA model. Visualization systems become more and more sophisticated. Hence, it is increasingly important to support users with an integrated knowledge base in making constructive choices and drawing the right conclusions. We support the effective reactivation of visualization software resources by augmenting them with knowledge-assistance. To provide a general and yet supportive implementation strategy, we propose an implementation process that bases on an application-agnostic architecture. This architecture is derived from existing knowledge-assisted visualization systems and the KAVA model. Its centerpiece is an ontology that is able to automatically analyze and classify input data, linked to a database to store classified instances. We discuss design decisions and advantages of the KR framework and illustrate its broad area of application in diverse integration possibilities of this architecture into an existing visualization system. In addition, we provide a detailed case study by augmenting an it-security system with knowledge-assistance facilities.
翻译:我们提出“知识摇滚”这一实施战略和准则,用以将可视化系统扩大为KAVA模型所界定的知识辅助可视化系统。可视化系统越来越复杂。因此,支持拥有综合知识基础的用户作出建设性选择和得出正确结论越来越重要。我们支持通过提供知识援助来有效恢复可视化软件资源。为了提供一般性的、但又具有支持性的执行战略,我们提议了一个基于应用-不可知性结构的执行进程。这一结构来自现有的知识辅助可视化系统和KAVA模型。其中心是一个核心,能够自动分析和分类输入数据,与存储分类案例的数据库连接。我们讨论KR框架的设计决定和优势,并展示其广泛应用领域,将这一结构的各种可能性纳入现有的可视化系统。此外,我们提供详细的案例研究,通过增加知识辅助设施来增强一个安全系统。