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A business process clustering algorithm using incremental covering arrays to explore search space and balanced Bayesian information criterion to evaluate quality of solutions

机译:一种业务流程聚类算法使用增量覆盖数组来探索搜索空间并使用平衡的贝叶斯信息准则来评估解决方案的质量

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摘要

The reuse of business processes (BPs) requires similarities between them to be suitably identified. Various approaches have been introduced to address this problem, but many of them feature a high computational cost and a low level of automation. This paper presents a clustering algorithm that groups business processes retrieved from a multimodal search system (based on textual and structural information). The algorithm is based on Incremental Covering Arrays (ICAs) with different alphabets to determine the possible number of groups to be created for each row of the ICA. The proposed algorithm also incorporates Balanced Bayesian Information Criterion to determine the optimal number of groups and the best solution for each query. Experimental evaluation shows that the use of ICAs with strength four (4) and different alphabets reduces the number of solutions needed to be evaluated and optimizes the number of clusters. The proposed algorithm outperforms other algorithms in various measures (precision, recall, and F-measure) by between 12% and 88%. Friedman and Wilcoxon non-parametric tests gave a 90–95% significance level to the obtained results. Better options of repository search for BPs help companies to reuse them. By thus reusing BPs, managers and analysts can more easily get to know the evolution and trajectory of the company processes, a situation that could be expected to lead to improved managerial and commercial decision making.
机译:业务流程(BP)的重用需要适当地识别它们之间的相似性。已经引入了各种方法来解决该问题,但是许多方法具有较高的计算成本和较低的自动化水平。本文提出了一种聚类算法,该算法对从多模式搜索系统中检索到的业务流程进行分组(基于文本和结构信息)。该算法基于具有不同字母的增量覆盖数组(ICA),以确定为ICA的每一行创建的组的可能数量。所提出的算法还结合了平衡贝叶斯信息准则,以确定每个查询的最佳组数和最佳解决方案。实验评估表明,使用强度为四(4)和不同字母的ICA可以减少需要评估的解决方案的数量,并可以优化聚类的数量。所提出的算法在各种度量(精度,查全率和F度量)方面优于其他算法,介于12%和88%之间。 Friedman和Wilcoxon非参数检验对所获得的结果给出了90-95%的显着性水平。 BP的更好的存储库搜索选项可以帮助公司重用它们。通过重新利用业务流程,经理和分析师可以更轻松地了解公司流程的演变和轨迹,这种情况有望改善管理和商业决策。

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