Alluvial diagrams are a popular technique for visualizing flow and relational data. However, successfully reading and interpreting the data shown in an alluvial diagram is likely influenced by factors such as data volume, complexity, and chart layout. To understand how alluvial diagram consumption is impacted by its visual features, we conduct two crowdsourced user studies with a set of alluvial diagrams of varying complexity, and examine (i) participant performance on analysis tasks, and (ii) the perceived complexity of the charts. Using the study results, we employ Bayesian modelling to predict participant classification of diagram complexity. We find that, while multiple visual features are important in contributing to alluvial diagram complexity, interestingly the importance of features seems to depend on the type of complexity being modeled, i.e. task complexity vs. perceived complexity.
翻译:冲积图是使流和关系数据可视化的流行技术,不过,成功地阅读和解释冲积图中显示的数据很可能受到数据量、复杂性和图表布局等因素的影响。为了了解冲积图的消耗如何受到其视觉特征的影响,我们进行了两个由多方联动的用户研究,其中有一套复杂程度不等的冲积图,并检查:(一) 参与者在分析任务方面的表现,以及(二) 图表的已知复杂性。我们利用研究结果,利用巴耶斯建模来预测参与者对图的复杂性的分类。我们发现,虽然多个视觉特征对于推动冲积图的复杂性很重要,但有趣的是,特征的重要性似乎取决于正在建模的复杂程度,即任务的复杂性与感知的复杂性。