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Process Mining Based on Clustering: A Quest for Precision

机译:基于聚类的过程挖掘:对精度的追求

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Process mining techniques attempt to extract non-trivial and useful information from event logs recorded by information systems. For example, there are many process mining techniques to automatically discover a process model based on some event log. Most of these algorithms perform well on structured processes with little disturbances. However, in reality it is difficult to determine the scope of a process and typically there are all kinds of disturbances. As a result, process mining techniques produce spaghetti-like models that are difficult to read and that attempt to merge unrelated cases. To address these problems, we use an approach where the event log is clustered iteratively such that each of the resulting clusters corresponds to a coherent set of cases that can be adequately represented by a process model. The approach allows for different clustering and process discovery algorithms. In this paper, we provide a particular clustering algorithm that avoids over-generalization and a process discovery algorithm that is much more robust than the algorithms described in literature [1]. The whole approach has been implemented in ProM.
机译:流程挖掘技术试图从信息系统记录的事件日志中提取非平凡和有用的信息。例如,有许多过程挖掘技术可基于某些事件日志自动发现过程模型。这些算法大多数都在结构化过程中表现良好,且干扰很小。但是,实际上很难确定过程的范围,并且通常存在各种干扰。结果,过程挖掘技术产生了类似意大利面条的模型,这些模型很难阅读并且试图合并无关的案例。为了解决这些问题,我们使用一种方法,其中将事件日志迭代地聚类,以使每个结果聚类对应于一组连贯的案例,这些案例可以由流程模型适当地表示。该方法允许使用不同的群集和流程发现算法。在本文中,我们提供了一种避免过度泛化的特殊聚类算法,以及一种比文献[1]中描述的算法更健壮的过程发现算法。整个方法已在ProM中实施。

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