Dashboards, which comprise multiple views on a single display, help analyze and communicate multiple perspectives of data simultaneously. However, creating effective and elegant dashboards is challenging since it requires careful and logical arrangement and coordination of multiple visualizations. To solve the problem, we propose a data-driven approach for mining design rules from dashboards and automating dashboard organization. Specifically, we focus on two prominent aspects of the organization: arrangement, which describes the position, size, and layout of each view in the display space; and coordination, which indicates the interaction between pairwise views. We build a new dataset containing 854 dashboards crawled online, and develop feature engineering methods for describing the single views and view-wise relationships in terms of data, encoding, layout, and interactions. Further, we identify design rules among those features and develop a recommender for dashboard design. We demonstrate the usefulness of DMiner through an expert study and a user study. The expert study shows that our extracted design rules are reasonable and conform to the design practice of experts. Moreover, a comparative user study shows that our recommender could help automate dashboard organization and reach human-level performance. In summary, our work offers a promising starting point for design mining visualizations to build recommenders.
翻译:设计仪表板,它包含对单个显示器的多重观点,有助于同时分析和传播数据多重观点。然而,创建有效和优雅的仪表板具有挑战性,因为它需要谨慎和逻辑安排以及多种直观化的协调。为了解决问题,我们提议对仪表板和自动仪表板组织中的采矿设计规则采取数据驱动办法。具体地说,我们侧重于组织的两个突出方面:安排,其中描述显示显示显示显示空间中每个视图的位置、大小和布局;协调,其中显示对称观点之间的互动。我们建立了一个包含854个仪表板的新数据集,在网上爬行,并开发了描述数据、编码、布局和互动方面单一观点和观点-观点-关系的特殊工程方法。此外,我们从这些特征中找出设计规则,并为仪表板设计制定推荐人。我们通过专家研究和用户研究展示了Dminer的有用性。专家研究表明,我们抽取的设计规则是合理的,符合专家的设计做法。此外,比较用户研究表明,我们的建议者可以帮助自动仪表板组织并达到人的级别业绩。在摘要中,我们的工作将提出一个很有希望的设计。</s>