Process analytics is an umbrella of data-driven techniques which includes making predictions for individual process instances or overall process models. At the instance level, various novel techniques have been recently devised, tackling next activity, remaining time, and outcome prediction. At the model level, there is a notable void. It is the ambition of this paper to fill this gap. To this end, we develop a technique to forecast the entire process model from historical event data. A forecasted model is a will-be process model representing a probable future state of the overall process. Such a forecast helps to investigate the consequences of drift and emerging bottlenecks. Our technique builds on a representation of event data as multiple time series, each capturing the evolution of a behavioural aspect of the process model, such that corresponding forecasting techniques can be applied. Our implementation demonstrates the accuracy of our technique on real-world event log data.
翻译:过程分析是数据驱动技术的伞式组合,其中包括对单个过程实例或总体过程模型作出预测。在实例一级,最近设计了各种新颖技术,处理下一个活动、剩余时间和结果预测。在模型一级,有一个显著的空白。这是本文件填补这一空白的雄心。为此,我们开发了一种技术,从历史事件数据中预测整个过程模型。预测模型是一种未来过程模型,代表着整个过程的可能未来状态。这种预测有助于调查漂移和新出现的瓶颈的后果。我们的技术建立在将事件数据表述为多时间序列的基础上,每个技术都捕捉到过程模型行为方面的演进,从而可以应用相应的预测技术。我们的实施显示了我们在现实世界事件日志数据方面的技术的准确性。