Chen Xi, Zeng Wei, Lin Yanna, Ai-Maneea Hayder Mahdi, Roberts Jonathan, Chang Remco
IEEE Trans Vis Comput Graph. 2021 Feb;27(2):1514-1524. doi: 10.1109/TVCG.2020.3030338. Epub 2021 Jan 28.
Multiple-view visualization (MV) is a layout design technique often employed to help users see a large number of data attributes and values in a single cohesive representation. Because of its generalizability, the MV design has been widely adopted by the visualization community to help users examine and interact with large, complex, and high-dimensional data. However, although ubiquitous, there has been little work to categorize and analyze MVs in order to better understand its design space. As a result, there has been little to no guideline in how to use the MV design effectively. In this paper, we present an in-depth study of how MVs are designed in practice. We focus on two fundamental measures of multiple-view patterns: composition, which quantifies what view types and how many are there; and configuration, which characterizes spatial arrangement of view layouts in the display space. We build a new dataset containing 360 images of MVs collected from IEEE VIS, EuroVis, and PacificVis publications 2011 to 2019, and make fine-grained annotations of view types and layouts for these visualization images. From this data we conduct composition and configuration analyses using quantitative metrics of term frequency and layout topology. We identify common practices around MVs, including relationship of view types, popular view layouts, and correlation between view types and layouts. We combine the findings into a MV recommendation system, providing interactive tools to explore the design space, and support example-based design.
多视图可视化(MV)是一种布局设计技术,常用于帮助用户在一个连贯的表示中查看大量数据属性和值。由于其通用性,MV设计已被可视化社区广泛采用,以帮助用户检查大型、复杂和高维数据并与之交互。然而,尽管MV无处不在,但为了更好地理解其设计空间,对其进行分类和分析的工作却很少。因此,关于如何有效使用MV设计几乎没有什么指导原则。在本文中,我们对MV在实际中的设计进行了深入研究。我们关注多视图模式的两个基本度量:组成,它量化视图类型及其数量;以及配置,它描述显示空间中视图布局的空间排列。我们构建了一个新的数据集,其中包含从2011年至2019年的IEEE VIS、EuroVis和PacificVis出版物中收集的360张MV图像,并对这些可视化图像的视图类型和布局进行了细粒度注释。基于这些数据,我们使用词频和布局拓扑的定量指标进行组成和配置分析。我们确定了MV的常见做法,包括视图类型之间的关系、流行的视图布局以及视图类型和布局之间的相关性。我们将这些发现整合到一个MV推荐系统中,提供交互式工具来探索设计空间,并支持基于示例的设计。