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Computing Alignments of Event Data and Process Models

机译:计算事件数据和流程模型的一致性

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The aim of conformance checking is to assess whether a process model and event data, recorded in an event log, conform to each other. In recent years, alignments have proven extremely useful for calculating conformance statistics. Computing optimal alignments is equivalent to solving a shortest path problem on the state space of the synchronous product net of a process model and event data. State-of-the-art alignment based conformance checking implementations exploit the A*-algorithm, a heuristic search method for shortest path problems, and include a wide range of parameters that likely influence their performance. In previous work, we presented a preliminary and exploratory analysis of the effect of these parameters. This paper extends the aforementioned work by means of large-scale statistically-sound experiments that describe the effects and trends of these parameters for different populations of process models. Our results show that, indeed, there exist parameter configurations that have a significant positive impact on alignment computation efficiency.
机译:一致性检查的目的是评估事件模型中记录的过程模型和事件数据是否彼此一致。近年来,对齐已被证明对于计算一致性统计数据非常有用。计算最佳对齐方式等同于解决过程模型和事件数据的同步产品网络的状态空间上的最短路径问题。基于最先进的比对的一致性检查实现利用A *算法(一种针对最短路径问题的启发式搜索方法),并包含可能影响其性能的各种参数。在以前的工作中,我们对这些参数的效果进行了初步的探索性分析。本文通过描述统计数据的大型实验扩展了上述工作,这些实验描述了这些参数对不同过程模型群体的影响和趋势。我们的结果表明,确实存在一些参数配置,这些参数配置对对齐计算效率具有明显的积极影响。

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