基于特征的过程模型差分检测算法

Jiaxing Wang, Bin Cao, Jing Fan, Tianyang Dong
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引用次数: 4

摘要

检测流程模型之间的差异对于许多业务流程管理场景非常重要,例如流程版本控制和流程合并。然而,检测进程差异绝非易事。现有的工作存在诸如不适当的数据结构支持或昂贵的计算等缺点。本文提出了一种基于特征的差分检测方法FB-Diff。首先,采用基于任务的流程结构树(TPST)半有序树模型来表示流程模型,该模型能够正确地描述流程的结构和行为(任务节点的执行顺序);然后FB-Diff采用分而治之的策略寻找两个tpst的相似部分。具体来说,我们将TPST划分为由特征向量表示的片段。特征向量由6个特征组成,每个特征描述了片段的一个关键特征。基于类似的部分,生成了可以将一个TPST转换为另一个TPST的编辑脚本。大量的实验评估表明,我们的方法在精度和效率方面都能满足实际的要求。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
FB-Diff: A Feature Based Difference Detection Algorithm for Process Models
Detecting difference between process models is important for many business process management scenarios, such as process version control and process merging. However, it is far from trivial to detect the process difference. Existing work suffers from drawbacks like inappropriate data structure support or expensive computation. In this paper, we propose FB-Diff, a feature-based difference detection approach. Firstly, a semi-ordered tree model called task based process structure tree (TPST) is used to represent a process model, which can correctly describe the structure as well as the behavior (the execution sequence of task nodes). Then FB-Diff adopts a divide and conquer strategy to find the similar parts of two TPSTs. Specically, we divide the TPST into fragments that are represented by feature vectors. A feature vector consists of six features, and each feature describes a key characteristic of the fragment. Based on the similar parts, the edit script that can transform one TPST into the other is generated. The extensive experimental evaluation shows that our method can meet the real requirements in terms of precision and efficiency.
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