Process mining methods often analyze processes in terms of the individual end-to-end process runs. Process behavior, however, may materialize as a general state of many involved process components, which can not be captured by looking at the individual process instances. A more holistic state of the process can be determined by looking at the events that occur close in time and share common process capacities. In this work, we conceptualize such behavior using high-level events and propose a new framework for detecting and logging such high-level events. The output of our method is a new high-level event log, which collects all generated high-level events together with the newly assigned event attributes: activity, case, and timestamp. Existing process mining techniques can then be applied on the produced high-level event log to obtain further insights. Experiments on both simulated and real-life event data show that our method is able to automatically discover how system-level patterns such as high traffic and workload emerge, propagate and dissolve throughout the process.
翻译:过程的采矿方法往往从单个端到端过程运行的角度分析过程。但是,过程行为作为许多参与过程组成部分的一般状态而可能发生,而通过观察单个过程实例是无法捕捉到的。通过观察时间接近的事件和分享共同过程能力,可以确定过程的更全面状态。在这项工作中,我们利用高级别活动来构思这种行为,并提出探测和记录这种高级别活动的新框架。我们方法的产出是一个新的高级别活动日志,它汇集了所有产生的高级别活动以及新指定事件属性:活动、案例和时间戳。然后,现有的过程采矿技术可以应用在制作的高级别活动日志上,以获得进一步的洞察力。模拟和现实事件数据的实验表明,我们的方法能够自动发现整个过程如何出现诸如高流量和工作量、传播和溶解的系统性模式。