论文标题

迈向自动化过程规划和采矿

Towards Automated Process Planning and Mining

论文作者

Fettke, Peter, Rombach, Alexander

论文摘要

迄今为止,AI计划,机器学习和过程采矿已经发展成为单独的研究领域。同时,近年来,在这些领域的交汇处获得了许多有趣的概念和见解。例如,现在可以在机器学习的帮助下对未来过程的行为进行全面预测。但是,对于这些发现的实际应用,不仅有必要了解预期的课程,而且要为实现目标的建议和提示,即执行全面的过程计划。同时,仍然缺乏上述研究领域的足够整合。在本文中,我们介绍了一个研究项目,其中来自AI和BPM现场的研究人员共同合作。因此,我们讨论了总体研究问题,研究的相关领域以及我们的整体研究框架,以自动从执行过程数据中得出过程模型,得出后续的计划问题并进行自动计划,以便使用实时预测适应和执行业务流程。

AI Planning, Machine Learning and Process Mining have so far developed into separate research fields. At the same time, many interesting concepts and insights have been gained at the intersection of these areas in recent years. For example, the behavior of future processes is now comprehensively predicted with the aid of Machine Learning. For the practical application of these findings, however, it is also necessary not only to know the expected course, but also to give recommendations and hints for the achievement of goals, i.e. to carry out comprehensive process planning. At the same time, an adequate integration of the aforementioned research fields is still lacking. In this article, we present a research project in which researchers from the AI and BPM field work jointly together. Therefore, we discuss the overall research problem, the relevant fields of research and our overall research framework to automatically derive process models from executional process data, derive subsequent planning problems and conduct automated planning in order to adaptively plan and execute business processes using real-time forecasts.

扫码加入交流群

加入微信交流群

微信交流群二维码

扫码加入学术交流群,获取更多资源