Process mining is widely used to diagnose processes and uncover performance and compliance problems. It is also possible to see relations between different behavioral aspects, e.g., cases that deviate more at the beginning of the process tend to get delayed in the later part of the process. However, correlations do not necessarily reveal causalities. Moreover, standard process mining diagnostics do not indicate how to improve the process. This is the reason we advocate the use of structural equation models and counterfactual reasoning. We use results from causal inference and adapt these to be able to reason over event logs and process interventions. We have implemented the approach as a ProM plug-in and have evaluated it on several data sets.
翻译:开采过程被广泛用于诊断过程和发现业绩及合规问题,还有可能看到不同行为方面之间的关系,例如,在过程开始时出现偏差的情况往往在过程的后期出现延误,但相关情况并不一定揭示出因果关系,此外,标准的采矿过程诊断并不表明如何改进过程,这就是我们提倡使用结构等式模型和反事实推理的原因。我们使用因果推理结果,并调整这些结果,以便能够对事件日志和过程干预进行合理解释。我们作为ProM插件采用了这种方法,并对若干数据集进行了评估。