Process mining involves discovering, monitoring, and improving real processes by extracting knowledge from event logs in information systems. Process mining has become an important topic in recent years, as evidenced by a growing number of case studies and commercial tools. Current studies in this area assume that event records are created separately from a conceptual model (CM). Techniques are then used to discover missing processes and conformance with the CM, as well as for checks and enhancements. By contrast, in this paper we focus on modeling events as part of a tight multilevel CM that includes a static description, dynamics, events-log scheme, and monitoring and control system. If there is an out-of-model event log, it is treated as a requirement needed to build or enrich the CM. The motivation for such a unified system is our thesis that process mining is an essential component of a CM with built-in mining capabilities to perform self-process mining and attain completeness. Accordingly, our proposed conceptual model facilitates collecting data generated about itself. The resultant framework emphasizes an integrated representation of systems to include process-mining functionalities. Case studies that start with event logs are recast to evolve around a model-first approach that is not limited to the initial event log. The result presents a framework that achieves the aims of process mining in a more comprehensive way
翻译:采矿过程涉及发现、监测和改进实际过程,从信息系统的事件日志中提取知识。近年来,采矿过程已成为一个重要的专题,越来越多的案例研究和商业工具证明了这一点。这一领域的目前研究假定,事件记录是独立于概念模型(CM)而建立的。然后,利用技术发现缺失的过程,与CM保持一致,并进行检查和加强。相比之下,在本文件中,我们的重点是模拟事件,作为紧凑多层次的CM的一部分,其中包括静态描述、动态、事件-记录计划以及监测和控制系统。如果有一个示范性事件日志,则被视为建立或丰富CM所需的一项要求。这种统一系统的动机是,我们的论点是,采矿过程是CM的基本组成部分,具有进行自处理采矿和获得完整性的内在采矿能力。因此,我们提出的概念模型有助于收集本身产生的数据。结果框架强调系统的综合代表性,包括进程挖掘功能。从事件日志开始的案例研究正在重新研究,以建立或丰富CMMMM。这样一个统一的系统的动机是我们主张,即,即采矿过程是一个比较全面的框架,其初步目标是实现一个比较全面的进程。