Within process mining, a relevant activity is conformance checking. Such activity consists of establishing the extent to which actual executions of a process conform the expected behavior of a reference model. Current techniques focus on prescriptive models of the control-flow as references. In certain scenarios, however, a prescriptive model might not be available and, additionally, the control-flow perspective might not be ideal for this purpose. This paper tackles these two problems by suggesting a conformance approach that uses a descriptive model (i.e., a pattern of the observed behavior over a certain amount of time) which is not necessarily referring to the control-flow (e.g., it can be based on the social network of handover of work). Additionally, the entire approach can work both offline and online, thus providing feedback in real time. The approach, which is implemented in ProM, has been tested and results from 3 experiments with real world as well as synthetic data are reported.
翻译:在采矿过程中,相关的活动是符合要求的检查。这种活动包括确定一个过程的实际执行在多大程度上符合一个参考模型的预期行为。目前的技术侧重于控制流程的规范模式作为参考。但是,在某些假设中,可能没有规范模式,此外,控制流程的观点可能并不理想。本文件通过建议采用一种符合标准的方法来解决这两个问题,即使用描述模式(即一定时间上观察到的行为模式),而该模式不一定指控制流程(例如,它可以基于工作交接的社会网络)。此外,整个方法可以运行离线和在线,从而实时提供反馈。在ProM中实施的这一方法已经经过测试,并报告了与现实世界和合成数据有关的3项实验的结果。