论文标题

过程树的对齐近似

Alignment Approximation for Process Trees

论文作者

Schuster, Daniel, van Zelst, Sebastiaan, van der Aalst, Wil M. P.

论文摘要

比较观察到的行为(过程执行过程中生成的事件数据)与建模行为(过程模型)是过程挖掘分析的重要步骤。对齐是用于计算一致性检查统计数据的事实上的标准技术。但是,对齐的计算在计算上是复杂的,因为必须在随着模型的大小和观察到的行为而非线性生长的状态空间上解决最短路径问题,从而导致众所周知的状态空间爆炸问题。在本文中,我们提出了一个新颖的框架,以利用其层次结构来近似过程树。过程树是最先进的过程采矿技术(例如电感采矿方法)使用的重要过程模型形式主义。我们的方法利用给定过程树的结构特性,并将对齐计算问题分为较小的子问题。最后,子分子被组成以获得对齐。我们的实验表明,我们的方法在准确性和计算时间之间提供了良好的平衡。

Comparing observed behavior (event data generated during process executions) with modeled behavior (process models), is an essential step in process mining analyses. Alignments are the de-facto standard technique for calculating conformance checking statistics. However, the calculation of alignments is computationally complex since a shortest path problem must be solved on a state space which grows non-linearly with the size of the model and the observed behavior, leading to the well-known state space explosion problem. In this paper, we present a novel framework to approximate alignments on process trees by exploiting their hierarchical structure. Process trees are an important process model formalism used by state-of-the-art process mining techniques such as the inductive mining approaches. Our approach exploits structural properties of a given process tree and splits the alignment computation problem into smaller sub-problems. Finally, sub-results are composed to obtain an alignment. Our experiments show that our approach provides a good balance between accuracy and computation time.

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