一种基于词嵌入的过程模型匹配方法

M. Abdelkader, Mekour Mansour
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引用次数: 1

摘要

本文提出了一种新的基于词嵌入的业务流程模型匹配方法。该方法分四个步骤对两个过程模型进行对齐。首先对活动标签进行提取和预处理,去除无意义的词,然后在两个标签的词汇空间中,用一个n维向量表示组成活动标签的每个词,并使用基于WordNet的语义相似度度量。基于这些表示,通过平均表示活动标签中找到的单词的向量来计算每个活动标签的向量表示。最后,如果使用余弦度量计算的相似性得分大于某个预定义的阈值,则报告两个活动标签相似。在知名数据集上进行了实验,以评估该方法的性能。结果表明,该方法与RMM/NHCM和OPBOT工具具有相同的优势,可以有效地匹配过程模型。
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A Method Based on a New Word Embedding Approach for Process Model Matching
This paper proposes a method based on a new word embedding approach for matching business process model. The proposed method aligns two process models in four steps. First activity labels are extracted and pre-processed to remove meaningless words, then each word composing an activity label and using a semantic similarity metric based on WordNet is represented with an n-dimensional vector in the space of the vocabulary of the two labels to be compared. Based on these representations, a vector representation of each activity label is computed by averaging the vectors representing words found in the activity label. Finally, the two activity labels are reported as similar if their similarity score computed using the cosine metric is greater than some predefined threshold. An experiment was conducted on well-known dataset to assess the performance of the proposed method. The results showed that the proposed method shared the first place with RMM/NHCM and OPBOT tools and can be effective in matching process models.
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