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Process mining techniques and applications - A systematic mapping study

机译:处理挖掘技术和应用 - 系统映射研究

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摘要

Process mining is a growing and promising study area focused on understanding processes and to help capture the more significant findings during real execution rather than, those methods that, only observed idealized process model. The objective of this article is to map the active research topics of process mining and their main publishers by country, periodicals, and conferences. We also extract the reported application studies and classify these by exploration domains or industry segments that are taking advantage of this technique. The applied research method was systematic mapping, which began with 3713 articles. After applying the exclusion criteria, 1278 articles were selected for review. In this article, an overview regarding process mining is presented, the main research topics are identified, followed by identification of the most applied process mining algorithms, and finally application domains among different business segments are reported on. It is possible to observe that the most active research topics are associated with the process discovery algorithms, followed by conformance checking, and architecture and tools improvements. In application domains, the segments with major case studies are healthcare followed by information and communication technology, manufacturing, education, finance, and logistics. (C) 2019 Elsevier Ltd. All rights reserved.
机译:流程挖掘是一个不断增长和有前途的研究领域,重点是理解过程,并帮助捕获实际执行期间更重要的发现,而不是那些只观察到理想化过程模型的方法。本文的目标是通过国家,期刊和会议映射流程挖掘和主要出版商的主动研究主题。我们还提取了报告的申请研究,并通过勘探域或正在利用这种技术的行业段进行分类。所应用的研究方法是系统的映射,从3713篇文章开始。申请排除标准后,选择1278篇文章进行审查。在本文中,提出了一个关于过程挖掘的概述,识别主要研究主题,然后识别最申请的过程挖掘算法,最后报告了不同业务段之间的应用域。可以观察到最具活跃的研究主题与过程发现算法相关联,然后是一致性检查和架构和工具改进。在应用领域中,具有主要案例研究的细分是医疗保健,然后是信息和通信技术,制造,教育,金融和物流。 (c)2019 Elsevier Ltd.保留所有权利。

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