IEEE Trans Vis Comput Graph. 2018 Jan;24(1):749-759. doi: 10.1109/TVCG.2017.2745138. Epub 2017 Aug 29.
We explore how to rigorously evaluate multidimensional visualizations for their ability to support decision making. We first define multi-attribute choice tasks, a type of decision task commonly performed with such visualizations. We then identify which of the existing multidimensional visualizations are compatible with such tasks, and set out to evaluate three elementary visualizations: parallel coordinates, scatterplot matrices and tabular visualizations. Our method consists in first giving participants low-level analytic tasks, in order to ensure that they properly understood the visualizations and their interactions. Participants are then given multi-attribute choice tasks consisting of choosing holiday packages. We assess decision support through multiple objective and subjective metrics, including a decision accuracy metric based on the consistency between the choice made and self-reported preferences for attributes. We found the three visualizations to be comparable on most metrics, with a slight advantage for tabular visualizations. In particular, tabular visualizations allow participants to reach decisions faster. Thus, although decision time is typically not central in assessing decision support, it can be used as a tie-breaker when visualizations achieve similar decision accuracy. Our results also suggest that indirect methods for assessing choice confidence may allow to better distinguish between visualizations than direct ones. We finally discuss the limitations of our methods and directions for future work, such as the need for more sensitive metrics of decision support.
我们探讨如何严格评估多维可视化在支持决策方面的能力。我们首先定义了多属性选择任务,这是一种常用的此类可视化决策任务。然后,我们确定了哪些现有的多维可视化与这些任务兼容,并着手评估三种基本的可视化:平行坐标、散点矩阵和表格可视化。我们的方法首先让参与者进行低级别的分析任务,以确保他们正确理解了可视化及其交互作用。然后,参与者会进行多属性选择任务,选择度假套餐。我们通过多个客观和主观的指标来评估决策支持,包括基于选择与自我报告的属性偏好之间一致性的决策准确性指标。我们发现这三种可视化在大多数指标上都相当,表格可视化略占优势。特别是,表格可视化允许参与者更快地做出决策。因此,虽然决策时间在评估决策支持时通常不是核心因素,但在可视化达到相似决策准确性时,它可以用作决定胜负的因素。我们的结果还表明,评估选择信心的间接方法可能比直接方法更能区分可视化。我们最后讨论了我们方法的局限性和未来工作的方向,例如需要更敏感的决策支持度量标准。