首页> 外文期刊>Wirtschaftsinformatik >Business Process Modeling Abstraction Based on Semi-Supervised Clustering Analysis
【24h】

Business Process Modeling Abstraction Based on Semi-Supervised Clustering Analysis

机译:基于半监督聚类分析的业务流程建模抽象

获取原文
获取原文并翻译 | 示例
           

摘要

The most prominent Business Process Model Abstraction (BPMA) use case is the construction of the process "quick view" for rapidly comprehending a complex process. Some researchers propose process abstraction methods to aggregate the activities on the basis of their semantic similarity. One important clustering technique used in these methods is traditional k-means cluster analysis which so far is an unsupervised process without any priori information, and most of the techniques aggregate the activities only according to business semantics without considering the requirement of an order-preserving model transformation. The paper proposes a BPMA method based on semi-supervised clustering which chooses the initial clusters based on the refined process structure tree and designs constraints by combining the control flow consistency of the process and the semantic similarity of the activities to guide the clustering process. To be more precise, the constraint function is discovered by mining from a process model collection enriched with subprocess relations. The proposed method is validated by applying it to a process model repository in use. In an experimental validation, the proposed method is compared to the traditional k-means clustering (parameterized with randomly chosen initial clusters and an only semantics-based distance measure), showing that the approach closely approximates the decisions of the involved modelers to cluster activities. As such, the paper contributes to the development of modeling support for effective process model abstraction, facilitating the use of business process models in practice.
机译:最突出的业务流程模型抽象(BPMA)用例是构建“快速视图”流程,以快速理解复杂的流程。一些研究人员提出了基于过程抽象的方法,以基于它们的语义相似性来聚合活动。这些方法中使用的一种重要的聚类技术是传统的k均值聚类分析,迄今为止它是一个无监督的过程,没有任何先验信息,并且大多数技术仅根据业务语义聚合活动,而无需考虑订单保留模型的要求。转型。提出了一种基于半监督聚类的BPMA方法,该方法基于精炼的流程结构树选择初始聚类,并结合流程的控制流一致性和活动的语义相似性来设计约束条件,以指导聚类过程。更准确地说,约束函数是通过从富含子过程关系的过程模型集合中挖掘而发现的。通过将其应用到使用中的过程模型存储库中,可以验证所提出的方法。在实验验证中,将提出的方法与传统的k均值聚类(通过随机选择的初始聚类和仅基于语义的距离度量进行参数化)进行了比较,表明该方法非常接近所涉及的建模者对聚类活动的决策。因此,本文为有效的流程模型抽象的建模支持的开发做出了贡献,从而促进了业务流程模型在实践中的使用。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号