Business processes are bound to evolve as a form of adaption to changes, and such changes are referred as process drifts. Current process drift detection methods perform well on clean event log data, but the performance can be tremendously affected by noises. A good process drift detection method should be accurate, fast, and robust to noises. In this paper, we propose an offline process drift detection method which identifies each newly observed behaviour as a candidate drift point and checks if the new behaviour can signify significant changes to the original process behaviours. In addition, a bidirectional search method is proposed to accurately locate both the adding and removing of behaviours. The proposed method can accurately detect drift points from event logs and is robust to noises. Both artificial and real-life event logs are used to evaluate our method. Results show that our method can consistently report accurate process drift time while maintaining a reasonably fast detection speed.
翻译:业务流程必然会演变成适应变化的一种形式,这种变化被称为流程漂移。当前流程漂移探测方法在清洁事件日志数据方面效果良好,但运行可能受到噪音的极大影响。良好的流程漂移探测方法应当准确、快速且对噪音有力。在本文件中,我们提议一种脱线过程漂移探测方法,将每个新观察到的行为确定为候选漂移点,如果新行为表明对原始流程行为有重大变化,则进行检查。此外,还提议了双向搜索方法,以准确定位增加和清除行为。拟议方法可以准确地检测事件日志中的漂移点,对噪音具有很强的威力。使用人工和现实活动日志来评估我们的方法。结果显示,我们的方法可以始终如一地报告准确的流程漂移时间,同时保持合理的快速探测速度。