将流程挖掘结果转化为可理解的业务信息

P. Ceravolo, A. Azzini, E. Damiani, M. Lazoi, Manuela Marra, A. Corallo
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引用次数: 11

摘要

今天,大多数业务流程都植根于在日志文件中记录操作事件的信息系统。过程挖掘算法利用这些信息来发现和限定观察过程和建模过程之间的差异。然而,这些算法的输出与业务属性没有明确的联系。通过提出一种基于组织采用的业务规则校准流程挖掘结果的方法,我们的工作面临着这些限制。其总体思想涉及将流程挖掘算法应用于事件日志的后续细化,基于业务规则过滤流程执行。通过这种方式,我们能够将这些结果与相应的业务规则所要求的流程的特定特征相关联。这种方法面对的是一个使用意大利制造公司提供的数据的真实场景。
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Translating Process Mining Results into Intelligible Business Information
Most business processes are today rooted into an information system recording operational events in log files. Process Mining algorithms exploit this information to discover and qualify differences between observed and modelled process. However, the output of these algorithms are not clearly connected with business properties. Our work faces these limitations by proposing an approach for calibrating Process Mining results based on the Business Rules adopted by an organisation. The general idea relates on applying Process Mining algorithms on subsequent refinements of the event log, filtering process executions based on Business Rules. This way we are able to associate these results with specific characterisations of the process, as entailed by the corresponding Business Rules. This approach is confronted to a real world scenario using data provided by an Italian manufacturing company.
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