Process Discovery of Business Processes Using Temporal Causal Relation

Yutika Amelia Effendi, Nania Nuzulita
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引用次数: 3

Abstract

Background: Nowadays, enterprise computing manages business processes which has grown up rapidly. This situation triggers the production of a massive event log. One type of event log is double timestamp event log. The double timestamp has a start time and complete time of each activity executed in the business process. It also has a close relationship with temporal causal relation. The temporal causal relation is a pattern of event log that occurs from each activity performed in the process.Objective: In this paper, seven types of temporal causal relation between activities were presented as an extended version of relations used in the double timestamp event log. Since the event log was not always executed sequentially, therefore using temporal causal relation, the event log was divided into several small groups to determine the relations of activities and to mine the business process.Methods: In these experiments, the temporal causal relation based on time interval which were presented in Gantt chart also determined whether each case could be classified as sequential or parallel relations. Then to obtain the business process, each temporal causal relation was combined into one business process based on the timestamp of activity in the event log.Results: The experimental results, which were implemented in two real-life event logs, showed that using temporal causal relation and double timestamp event log could discover business process models.Conclusion: Considering the findings, this study concludes that business process models and their sequential and parallel AND, OR, XOR relations can be discovered by using temporal causal relation and double timestamp event log.Keywords:Business Process, Process Discovery, Process Mining, Temporal Causal Relation, Double Timestamp Event Log
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使用时间因果关系的业务流程发现
背景:如今,企业计算管理业务流程已经迅速发展起来。这种情况会触发大量事件日志的生成。一种类型的事件日志是双时间戳事件日志。双时间戳具有业务流程中执行的每个活动的开始时间和完成时间。它还与时间因果关系密切相关。时间因果关系是流程中执行的每个活动中发生的事件日志模式。目的:本文将活动间的七种时间因果关系作为双时间戳事件日志中使用的关系的扩展版本。由于事件日志并不总是按顺序执行,因此使用时态因果关系,因此将事件日志分为几个小组,以确定活动之间的关系并挖掘业务流程。方法:在这些实验中,以甘特图表示的基于时间间隔的时间因果关系也决定了每个案例是可以划分为顺序关系还是并行关系。然后,根据事件日志中活动的时间戳,将每个时间因果关系组合成一个业务流程,从而获得业务流程。结果:在两个现实事件日志中实现的实验结果表明,使用时间因果关系和双时间戳事件日志可以发现业务流程模型。结论:结合研究结果,本研究认为利用时间因果关系和双时间戳事件日志可以发现业务流程模型及其顺序和并行的and、OR、XOR关系。关键词:业务流程,流程发现,流程挖掘,时间因果关系,双时间戳事件日志
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