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Incremental Process Discovery using Petri Net Synthesis

机译:使用Petri网综合进行增量过程发现

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Process discovery aims at constructing a model from a set of observations given by execution traces (a log). Petri nets are a preferred target model in that they produce a compact description of the system by exhibiting its concurrency. This article presents a process discovery algorithm using Petri net synthesis, based on the notion of region introduced by A. Ehrenfeucht and G. Rozenberg and using techniques from linear algebra. The algorithm proceeds in three successive phases which make it possible to find a compromise between the ability to infer behaviours of the system from the set of observations while ensuring a parsimonious model, in terms of fitness, precision and simplicity. All used algorithms are incremental which means that one can modify the produced model when new observations are reported without reconstructing the model from scratch.
机译:流程发现旨在根据执行跟踪(日志)给出的一组观察结果构建模型。 Petri网是首选的目标模型,因为它们通过展示其并发性来生成系统的紧凑描述。本文基于A. Ehrenfeucht和G. Rozenberg引入的区域概念以及线性代数技术,提出了一种使用Petri网合成的过程发现算法。该算法在三个连续的阶段中进行,这使得在适应性,精确性和简单性方面可以从一组观测值推断系统行为的能力之间找到折衷,同时确保了简约模型。所有使用的算法都是增量算法,这意味着当报告新观测值时,可以修改生成的模型,而无需从头开始重建模型。

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