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Activity Mining by Global Trace Segmentation

机译:通过全局跟踪细分进行活动挖掘

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Process Mining is a technology for extracting non-trivial and useful information from execution logs. For example, there are many process mining techniques to automatically discover a process model describing the causal dependencies between activities . Unfortunately, the quality of a discovered process model strongly depends on the quality and suitability of the input data. For example, the logs of many real-life systems do not refer to the activities an analyst would have in mind, but are on a much more detailed level of abstraction. Trace segmentation attempts to group low-level events into clusters, which represent the execution of a highet-level activity in the (available or imagined) process meta-model. As a result, the simplified log can be used to discover better process models. This paper presents a new activity mining approach based on global trace segmentation. We also present an implementation of the approach, and we validate it using a real-life event log from ASML's test process.
机译:流程挖掘是一种用于从执行日志中提取不重要且有用的信息的技术。例如,有许多过程挖掘技术可以自动发现描述活动之间因果关系的过程模型。不幸的是,发现的过程模型的质量很大程度上取决于输入数据的质量和适用性。例如,许多现实生活中的系统的日志并不涉及分析人员要考虑的活动,而是涉及更为详细的抽象级别。跟踪分段尝试将低级事件分组,这些簇表示在(可用或可想象的)流程元模型中执行高级别活动。结果,简化的日志可用于发现更好的过程模型。本文提出了一种基于全局跟踪分割的新的活动挖掘方法。我们还介绍了该方法的实现,并使用ASML测试过程中的真实事件日志对它进行了验证。

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