A Novel Approach for Business Process Model Matching Using Genetic Algorithms

M. Abdelkader, Ignacio García Rodríguez de Guzmán
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Abstract

This paper formulates the process model matching problem as an optimization problem and presents a heuristic approach based on genetic algorithms for computing a good enough alignment. An alignment is a set of not overlapping correspondences (i.e., pairs) between two process models(i.e., BP) and each correspondence is a pair of two sets of activities that represent the same behavior. The first set belongs to a source BP and the second set to a target BP. The proposed approach computes the solution by searching, over all possible alignments, the one that maximizes the intra-pairs cohesion while minimizing inter-pairs coupling. Cohesion of pairs and coupling between them is assessed using a proposed heuristic that combines syntactic and semantic similarity metrics. The proposed approach was evaluated on three well-known datasets. The results of the experiment showed that the approach has the potential to match business process models effectively.
基于遗传算法的业务流程模型匹配新方法
本文将过程模型匹配问题表述为优化问题,提出了一种基于遗传算法的启发式方法来计算足够好的匹配。对齐是两个流程模型(例如,对)之间的一组不重叠的对应(例如,对)。(BP),每个通信是一对代表相同行为的两组活动。第一组属于源BP,第二组属于目标BP。提出的方法通过在所有可能的对齐中搜索最大的对内内聚和最小的对间耦合来计算解决方案。使用一种结合句法和语义相似性度量的启发式方法来评估对的内聚性和它们之间的耦合。在三个已知的数据集上对所提出的方法进行了评估。实验结果表明,该方法具有有效匹配业务流程模型的潜力。
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