A novel approach to process mining: Intentional process models discovery

G. Khodabandelou, Charlotte Hug, C. Salinesi
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引用次数: 11

Abstract

So far, process mining techniques have suggested to model processes in terms of tasks that occur during the enactment of a process. However, research on method engineering and guidance has illustrated that many issues, such as lack of flexibility or adaptation, are solved more effectively when intentions are explicitly specified. This paper presents a novel approach of process mining, called Map Miner Method (MMM). This method is designed to automate the construction of intentional process models from process logs. MMM uses Hidden Markov Models to model the relationship between users' activities logs and the strategies to fulfill their intentions. The method also includes two specific algorithms developed to infer users' intentions and construct intentional process model (Map) respectively. MMM can construct Map process models with different levels of abstraction (fine-grained and coarse-grained process models) with respect to the Map metamodel formalism (i.e., metamodel that specifies intentions and strategies of process actors). This paper presents all steps toward the construction of Map process models topology. The entire method is applied on a large-scale case study (Eclipse UDC) to mine the associated intentional process. The likelihood of the obtained process model shows a satisfying efficiency for the proposed method.
流程挖掘的一种新方法:有意流程模型发现
到目前为止,流程挖掘技术建议根据流程制定期间发生的任务对流程进行建模。然而,对方法工程和指导的研究表明,当明确指定意图时,可以更有效地解决许多问题,例如缺乏灵活性或适应性。本文提出了一种新的过程挖掘方法,称为地图挖掘方法(MMM)。该方法旨在从过程日志中自动构建有意的过程模型。MMM使用隐马尔可夫模型来模拟用户活动日志和实现其意图的策略之间的关系。该方法还包括两种具体算法,分别用于推断用户意图和构建意图过程模型(Map)。相对于Map元模型形式化(即,指定流程参与者意图和策略的元模型),MMM可以构建具有不同抽象级别(细粒度和粗粒度流程模型)的Map流程模型。本文给出了构建Map过程模型拓扑的所有步骤。整个方法应用于一个大规模的案例研究(Eclipse UDC),以挖掘相关的意图过程。所得过程模型的似然性表明,所提出的方法具有令人满意的效率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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