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A Tour in Process Mining: From Practice to Algorithmic Challenges

机译:在流程挖掘的巡演:从练习到算法挑战

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Process mining seeks the confrontation between modeled behavior and observed behavior. In recent years, process mining techniques managed to bridge the gap between traditional model-based process analysis (e.g., simulation and other business process management techniques) and data-centric analysis techniques such as machine learning and data mining. Process mining is used by many data-driven organizations as a means to improve performance or to ensure compliance. Traditionally, the focus was on the discovery of process models from event logs describing real process executions. However, process mining is not limited to process discovery and also includes conformance checking. Process models (discovered or hand-made) may deviate from reality. Therefore, we need powerful means to analyze discrepancies between models and logs. These are provided by conformance checking techniques that first align modeled and observed behavior, and then compare both. The resulting alignments are also used to enrich process models with performance related information extracted from the event log. This tutorial paper focuses on the control-flow perspective and describes a range of process discovery and conformance checking techniques. The goal of the paper is to show the algorithmic challenges in process mining. We will show that process mining provides a wealth of opportunities for people doing research on Petri nets and related models of concurrency.
机译:过程挖掘寻求建模行为与观察到的行为之间的对抗。近年来,工艺采矿技术设法弥合了传统模型的过程分析(例如,仿真和其他业务流程管理技术)和数据中心分析技术,如机器学习和数据挖掘。许多数据驱动的组织使用过程挖掘作为提高性能或确保合规性的手段。传统上,重点是从描述真实流程执行的事件日志发现流程模型。然而,过程挖掘不限于过程发现,还包括一致性检查。流程模型(发现或手工制作)可能偏离现实。因此,我们需要强大的方法来分析模型和日志之间的差异。这些由一致性检查技术提供,首先将建模和观察到的行为进行调整,然后比较两者。结果对准还用于丰富从事件日志中提取的性能相关信息的过程模型。本教程侧重于控制流程透视图,并描述了一系列过程发现和一致性检查技术。本文的目标是展示过程挖掘中的算法挑战。我们将展示流程挖掘为人民对培养网和相关模型的并发模型进行了丰富的机会。

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