Multiple-view visualization (MV) has been heavily used in visual analysis tools for sensemaking of data in various domains (e.g., bioinformatics, cybersecurity and text analytics). One common task of visual analysis with multiple views is to relate data across different views. For example, to identify threats, an intelligence analyst needs to link people from a social network graph with locations on a crime-map, and then search for and read relevant documents. Currently, exploring cross-view data relationships heavily relies on view-coordination techniques (e.g., brushing and linking), which may require significant user effort on many trial-and-error attempts, such as repetitiously selecting elements in one view, and then observing and following elements highlighted in other views. To address this, we present SightBi, a visual analytics approach for supporting cross-view data relationship explorations. We discuss the design rationale of SightBi in detail, with identified user tasks regarding the use of cross-view data relationships. SightBi formalizes cross-view data relationships as biclusters, computes them from a dataset, and uses a bi-context design that highlights creating stand-alone relationship-views. This helps preserve existing views and offers an overview of cross-view data relationships to guide user exploration. Moreover, SightBi allows users to interactively manage the layout of multiple views by using newly created relationship-views. With a usage scenario, we demonstrate the usefulness of SightBi for sensemaking of cross-view data relationships.
翻译:多视图可视化(MV)在视觉分析工具中被大量用于不同领域(例如生物信息学、网络安全、文本分析等)的数据感知分析工具。视觉分析的共同任务之一是将不同观点的数据联系起来。例如,为了查明威胁,情报分析员需要将社会网络图中的人与犯罪图绘制地点联系起来,然后搜索和阅读相关文件。目前,探索交叉视图数据关系在很大程度上依赖于视觉协调技术(例如,交叉浏览和链接),这可能需要许多尝试尝试的用户做出重大努力,例如重复选择一种观点中的元素,然后观察和跟踪其他观点中突出的元素。为此,我们介绍SightBi,这是支持交叉浏览数据关系探索的视觉分析方法。我们详细讨论了SightBi的设计原理,其中确定了使用交互数据关系(例如交叉浏览和链接)的用户任务。Sightbi将交叉视图数据关系正式化为双组合,从一个视图中反复选择元素,然后观察其他观点中的元素,然后观察和观察。我们介绍了一种浏览关系的设计分析关系,从而维护了当前对用户的图像的图像。