Storyline visualizations are a popular way of visualizing characters and their interactions over time: Characters are drawn as x-monotone curves and interactions are visualized through close proximity of the corresponding character curves in a vertical strip. Existing methods to generate storylines assume a total ordering of the interactions, although real-world data often do not contain such a total order. Instead, multiple interactions are often grouped into coarser time intervals such as years. We exploit this grouping property by introducing a new model called storylines with time intervals and present two methods to minimize the number of crossings and horizontal space usage. We then evaluate these algorithms on a small benchmark set to show their effectiveness.
翻译:线状可视化是直观字符及其随时间而相互作用的一种流行方式:字符是作为X-monoton曲线绘制的,互动是通过垂直条纹中相近的相应字符曲线的可视化的。现有的生成故事线的方法假定了互动的总顺序,尽管真实世界数据通常不包含这样的总顺序。相反,多重互动往往被分组成年等更粗的时间间隔。我们利用这一属性分组的方式是采用一个新的模型,称为有时间间隔的故事线,并提出两种方法,以尽量减少跨越次数和水平空间的使用。然后我们用一个小基准来评估这些算法,以显示其有效性。</s>