A Textual Description Based Approach to Process Matching - The Practice of Enterprise Modeling (PoEM 2016)
Conference Papers Year : 2016

A Textual Description Based Approach to Process Matching

Maria Rana
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Khurram Shahzad
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  • PersonId : 1024280
Henrik Leopold
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  • PersonId : 1024282
Umair Babar
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Abstract

The increasing number of process models in an organization has led to the development of process model repositories, which allow to efficiently and effectively manage these large number of models. Searching process models is an inherent feature of such process repositories. However, the effectiveness of searching depends upon the accuracy of the underlying matching technique that is used to compute the degree of similarity between query-source process model pairs. Most of the existing matching techniques rely on the use of labels, structure or execution behavior of process models. The effectiveness of these techniques is, however, quiet low and far from being usable in practice. In this paper, we address this problem and propose the use of a combination of textual descriptions of process models and text matching techniques for process matching. The proposed approach is evaluated using the established metrics, precision, recall and F1 score. The results show that the use of textual descriptions is slightly more effective than activity labels.
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hal-01653532 , version 1 (01-12-2017)

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Maria Rana, Khurram Shahzad, Rao Nawab, Henrik Leopold, Umair Babar. A Textual Description Based Approach to Process Matching. 9th IFIP Working Conference on The Practice of Enterprise Modeling (PoEM), Nov 2016, Skövde, Sweden. pp.194-208, ⟨10.1007/978-3-319-48393-1_14⟩. ⟨hal-01653532⟩
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