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Process Mining as First-Order Classification Learning on Logs with Negative Events

机译:在具有负面事件的日志上进行过程挖掘作为一阶分类学习

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摘要

Process mining is the automated construction of process models from information system event logs. In this paper we identify three fundamental difficulties related to process mining: the lack of negative information, the presence of history-dependent behavior and the presence of noise. These difficulties can elegantly dealt with when process mining is represented as first-order classification learning on event logs supplemented with negative events. A first set of process discovery-experiments indicates the feasibility of this learning technique.
机译:流程挖掘是根据信息系统事件日志自动构建流程模型的过程。在本文中,我们确定了与过程挖掘相关的三个基本困难:缺少负面信息,存在依赖历史的行为以及存在噪声。当将过程挖掘表示为对事件日志进行一阶分类学习时,可以很好地解决这些困难,并补充负面事件。第一组过程发现实验表明了这种学习技术的可行性。

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