Executing operational processes generates event data, which contain information on the executed process activities. Process mining techniques allow to systematically analyze event data to gain insights that are then used to optimize processes. Visual analytics for event data are essential for the application of process mining. Visualizing unique process executions -- also called trace variants, i.e., unique sequences of executed process activities -- is a common technique implemented in many scientific and industrial process mining applications. Most existing visualizations assume a total order on the executed process activities, i.e., these techniques assume that process activities are atomic and were executed at a specific point in time. In reality, however, the executions of activities are not atomic. Multiple timestamps are recorded for an executed process activity, e.g., a start-timestamp and a complete-timestamp. Therefore, the execution of process activities may overlap and, thus, cannot be represented as a total order if more than one timestamp is to be considered. In this paper, we present a visualization approach for trace variants that incorporates start- and complete-timestamps of activities.
翻译:执行操作过程生成事件数据,其中包括关于已执行过程活动的信息; 过程采矿技术允许系统分析事件数据,以获得深入了解,然后用于优化过程; 事件数据的视觉分析对于应用过程采矿至关重要; 视觉化独特的过程处决 -- -- 也称为追踪变体,即所执行过程活动的独特序列 -- -- 在许多科学和工业过程采矿应用中实施的一种常见技术; 大多数现有可视化假设了所执行过程活动的总顺序,即这些技术假定过程活动是原子活动,是在特定时间进行的; 然而,事实上,活动的执行不是原子活动; 记录了执行过程活动的多个时间戳,例如,开始时间戳和完整时间戳; 因此,如果考虑一次以上的时间戳,执行过程活动可能重叠,因此不能代表总顺序。 在本文中,我们为追踪变种提供了一种可视化方法,其中包括活动的开始和完整时间标记。