过程发现中的强加规则:一种归纳挖掘方法

Ali Norouzifar, Marcus Dees, Wil van der Aalst
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引用次数: 0

摘要

流程发现旨在从事件日志中发现描述性流程模型。这些发现的流程模型描述了流程的实际执行情况,是一致性检查、性能分析和许多其他应用的基础元素。虽然目前大多数流程发现算法主要依赖于单个事件日志来发现模型,但其他信息源,如流程文档和领域专家的知识,仍未得到充分利用。传统的流程发现方法往往忽略了这些宝贵的信息。在本文中,我们提出了一种发现技术,在新颖的归纳式挖掘方法中融入了这些知识。这种方法将一组用户定义或发现的规则作为输入,并利用它们发现增强的流程模型。我们提出的框架已通过几个公开的真实事件日志进行了实施和测试。此外,为了展示该框架在实际环境中的有效性,我们与荷兰雇员保险机构 UWV 合作开展了一项案例研究。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Imposing Rules in Process Discovery: an Inductive Mining Approach
Process discovery aims to discover descriptive process models from event logs. These discovered process models depict the actual execution of a process and serve as a foundational element for conformance checking, performance analyses, and many other applications. While most of the current process discovery algorithms primarily rely on a single event log for model discovery, additional sources of information, such as process documentation and domain experts' knowledge, remain untapped. This valuable information is often overlooked in traditional process discovery approaches. In this paper, we propose a discovery technique incorporating such knowledge in a novel inductive mining approach. This method takes a set of user-defined or discovered rules as input and utilizes them to discover enhanced process models. Our proposed framework has been implemented and tested using several publicly available real-life event logs. Furthermore, to showcase the framework's effectiveness in a practical setting, we conducted a case study in collaboration with UWV, the Dutch employee insurance agency.
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