Despite the ubiquity of communicative visualizations, specifying communicative intent during design is ad hoc. Whether we are selecting from a set of visualizations, commissioning someone to produce them, or creating them ourselves, an effective way of specifying intent can help guide this process. Ideally, we would have a concise and shared specification language. In previous work, we have argued that communicative intents can be viewed as a learning/assessment problem (i.e., what should the reader learn and what test should they do well on). Learning-based specification formats are linked (e.g., assessments are derived from objectives) but some may more effectively specify communicative intent. Through a large-scale experiment, we studied three specification types: learning objectives, insights, and assessments. Participants, guided by one of these specifications, rated their preferences for a set of visualization designs. Then, we evaluated the set of visualization designs to assess which specification led participants to prefer the most effective visualizations. We find that while all specification types have benefits over no-specification, each format has its own advantages. Our results show that learning objective-based specifications helped participants the most in visualization selection. We also identify situations in which specifications may be insufficient and assessments are vital.
翻译:尽管通信视觉化普遍存在,但说明设计过程中的交流意图是临时性的。无论我们从一组视觉化中选择,还是委托某人制作或自己制作,一个有效的说明意图方法都能够帮助指导这一进程。理想的情况是,我们将有一个简洁和共同的规格语言。在以往的工作中,我们争论说,交流意图可以被视为一个学习/评估问题(即读者应该学习什么,应该进行什么测试);基于学习的规格格式是相互联系的(例如,评估是从目标中衍生出来的),但有些则可以更有效地说明交流意图。通过大规模实验,我们研究了三种规格类型:学习目标、洞察力和评估。参与者在其中一种规格的指导下,对一套视觉化设计的偏好程度进行了评级。然后,我们评估了一套直观化设计来评估哪些规格使参与者更喜欢最有效的直观化。我们发现,尽管所有规格的种类对不具体化有好处,但每种格式都有其自身的优点。我们通过大规模试验,研究了三种规格:学习目标、洞察力和评估。我们的结果还表明,客观的规格可以帮助参与者在最关键的规格化中学习。