首页> 外文会议>International conference on business process management >Automatic Discovery of Data-Centric and Artifact-Centric Processes
【24h】

Automatic Discovery of Data-Centric and Artifact-Centric Processes

机译:自动发现数据中心和以伪像为中心的进程

获取原文

摘要

Process discovery is a technique that allows for automatically discovering a process model from recorded executions of a process as it happens in reality. This technique has successfully been applied for classical processes where one process execution is constituted by a single case with a unique case identifier. Data-centric and artifact-centric systems such as ERP systems violate this assumption. Here a process execution is driven by process data having various notions of interrelated identifiers that distinguish the various interrelated data objects of the process. Classical process mining techniques fail in this setting. This paper presents an automatic technique for discovering for each notion of data object in the process a separate process model that describes the evolution of this object, also known as artifact life-cycle model. Given a relational database that stores process execution information of a data-centric system, the technique extracts event information, case identifiers and their interrelations, discovers the central process data objects and their associated events, and decomposes the data source into multiple logs, each describing the cases of a separate data object. Then classical process discovery techniques can be applied to obtain a process model for each object. The technique is implemented and has been evaluated on the production ERP system of a large retailer.
机译:进程发现是一种技术,允许自动发现从事实中遇到的录制执行的过程模型。该技术已成功应用于经典过程,其中一个流程执行由具有唯一案例标识符的单个案例构成。以ERP系统为中心的以伪影和以伪像为中心的系统违反了此假设。这里,流程执行是由具有各种相互关联的标识符的各种概念的处理数据驱动的,其区分过程的各种相互关联的数据对象。古典过程挖掘技术在此设置中失败。本文提出了一种自动技术,用于在过程中发现每个数据对象的每个概念,该过程描述了描述该对象的演变的单独的过程模型,也称为工件生命周期模型。给定存储数据中心系统的进程执行信息的关系数据库,技术提取事件信息,案例标识符及其相互关系,发现中央进程数据对象及其相关事件,并将数据源分解为多个日志,每个日志都描述单独的数据对象的情况。然后可以应用经典的过程发现技术来获得每个对象的过程模型。该技术是在大型零售商的生产ERP系统上进行了评估的。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号