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TAGER: Transition-Labeled Graph Edit Distance Similarity Measure on Process Models

机译:TAGER:转换标记图编辑过程模型上的距离相似性度量

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Although several approaches have been proposed to compute the similarity between process models, they have various limitations. We propose an approach named TAGER (Transition-lAbeled Graph Edit distance similarity MeasuRe) to compute the similarity based on the edit distance between coverability graphs. As the coverability graph represents the behavior of a Petri net well, TAGER, based on it, has a high precise computation. Besides, the T-labeled graphs (an isomorphic graph of the coverability graph) of models are independent, so TAGER can be used as the index for searching process models in a repository. We evaluate TAGER from efficiency and quality perspectives. The results show that TAGER meets all the seven criteria and the distance metric requirement that a good similarity algorithm should have. TAGER also balances the efficiency and precision well.
机译:虽然已经提出了几种方法来计算过程模型之间的相似性,但它们具有各种局限性。我们提出了一种名为Tager(转换标记的图形编辑距离相似度)的方法,以基于覆盖性图之间的编辑距离来计算相似度。由于覆盖性图表示Petri网井的行为,基于它的标题具有高精度计算。此外,模型的T标记图(覆盖性图的同构图)是独立的,因此标签可以用作搜索存储库中的过程模型的索引。我们从效率和质量的角度来看标签。结果表明,TAGER符合所有七个标准和距离度量要求,即良好的相似性算法应该具有。 TAGER还符合效率和精密良好。

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