【24h】

Mining Conditional Partial Order Graphs from Event Logs

机译:从事件日志中挖掘条件部分订单图

获取原文

摘要

Process mining techniques rely on event logs: the extraction of a process model (discovery) takes an event log as the input, the adequacy of a process model (conformance) is checked against an event log, and the enhancement of a process model is performed by using available data in the log. Several notations and formalisms for event log representation have been proposed in the recent years to enable efficient algorithms for the aforementioned process mining problems. In this paper we show how Conditional Partial Order Graphs (CPOGs), a recently introduced formalism for compact representation of families of partial orders, can be used in the process mining field, in particular for addressing the problem of compact and easy-to-comprehend representation of event logs with data. We present algorithms for extracting both the control flow as well as the relevant data parameters from a given event log and show how CPOGs can be used for efficient and effective visualisation of the obtained results. We demonstrate that the resulting representation can be used to reveal the hidden interplay between the control and data flows of a process, thereby opening way for new process mining techniques capable of exploiting this interplay. Finally, we present opensource software support and discuss current limitations of the proposed approach.
机译:过程挖掘技术依赖于事件日志:进程模型的提取(发现)采用事件日志作为输入,对事件日志检查进程模型(一致性)的充分性,并执行进程模型的增强通过使用日志中的可用数据。近年来提出了事件日志表示的几个符号和形式主义,以实现上述过程挖掘问题的有效算法。在本文中,我们可以在过程挖掘领域中使用如何在流程挖掘领域使用条件部分订单图(CPOG),最近引入的部分订单的紧凑型形式主义,特别用于解决紧凑且易于理解的问题具有数据的事件日志的表示。我们提供了用于从给定的事件日志中提取控制流程以及相关数据参数的算法,并显示CPOGS如何用于获得所获得的结果的有效和有效可视化。我们证明所产生的表示可以用于揭示过程的控制和数据流之间的隐藏相互作用,从而为能够利用这种相互作用的新工艺挖掘技术打开方式。最后,我们提出了OpenSource软件支持,并讨论所提出的方法的当前限制。

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