用于评估发现的过程模型的稳健f度量

Jochen De Weerdt, M. D. Backer, J. Vanthienen, B. Baesens
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引用次数: 117

摘要

在流程挖掘研究中,最重要的研究领域之一是流程发现,它可以定义为从审计跟踪或信息系统事件日志中提取控制流模型。对于任何流程发现分析来说,评估已发现的流程模型都是一项必要但困难的任务。在本文中,我们提出了一种基于人为产生的负面事件来评估发现过程模型的新方法。这种方法允许为发现的过程模型定义行为f度量,这是本文的主要贡献。
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A robust F-measure for evaluating discovered process models
Within process mining research, one of the most important fields of study is process discovery, which can be defined as the extraction of control-flow models from audit trails or information system event logs. The evaluation of discovered process models is an essential but difficult task for any process discovery analysis. With this paper, we propose a novel approach for evaluating discovered process models based on artificially generated negative events. This approach allows for the definition of a behavioral F-measure for discovered process models, which is the main contribution of this paper.
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