People have expectations about how colors map to concepts in visualizations, and they are better at interpreting visualizations that match their expectations. Traditionally, studies on these expectations (inferred mappings) distinguished distinct factors relevant for visualizations of categorical vs. continuous information. Studies on categorical information focused on direct associations (e.g., mangos are associated with yellows) whereas studies on continuous information focused on relational associations (e.g., darker colors map to larger quantities; dark-is-more bias). We unite these two areas within a single framework of assignment inference. Assignment inference is the process by which people infer mappings between perceptual features and concepts represented in encoding systems. Observers infer globally optimal assignments by maximizing the "merit," or "goodness," of each possible assignment. Previous work on assignment inference focused on visualizations of categorical information. We extend this approach to visualizations of continuous data by (a) broadening the notion of merit to include relational associations and (b) developing a method for combining multiple (sometimes conflicting) sources of merit to predict people's inferred mappings. We developed and tested our model on data from experiments in which participants interpreted colormap data visualizations, representing fictitious data about environmental concepts (sunshine, shade, wild fire, ocean water, glacial ice). We found both direct and relational associations contribute independently to inferred mappings. These results can be used to optimize visualization design to facilitate visual communication.
翻译:人们对视觉化概念的颜色图有期望,他们更能解释与其期望相符的可视化。传统上,关于这些期望的研究(推断绘图)区分了与直观和连续信息直观相关的不同因素。关于绝对信息的研究侧重于直接关联(如芒果与黄色相关),而关于连续信息的研究侧重于直观关联(如暗色图与较大数量;深色偏差),而关于连续信息的研究则侧重于直观关联(如暗色图与更大数量;深色偏差)。我们把这两个领域联合起来,在一个任务推论框架内。任务推论是人们在编码系统所代表的视觉特征和概念之间进行可视性绘图的过程。观察者通过尽可能扩大“美”或“良好”每项可能任务中的直观信息,推论以直观信息与直观关联为重点。我们把这一方法推广到连续数据的可视化,方法是:(a)扩大精度概念的概念,以包括关联性联系和(b) 开发一种方法,将多种(有时相互矛盾的) 直观特征特征特征和概念的特征和概念系统化。观察者认为,我们从直观数据中开发了数据,从直判数据,我们从直判数据到直判数据,我们用来进行数据,我们从直判。