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Semi-automatic inductive construction of reference process models that represent best practices in public administrations: A method

机译:半自动诱导施工参考过程模型,即在公共主管部门的最佳实践:一种方法

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Business process management often uses reference models to improve processes or as starting point when creating individual process models. The current academic literature offers primarily deductive methods with which to develop these reference models, although some methods develop reference models inductively from a set of individual process models, focusing on deriving and representing common practices. However, there is no inductive method with which to detect best practices and represent them in a reference model. This paper addresses this research gap by proposing a method by which to develop reference process models that represent best practices in public administrations semi-automatically and inductively. The method uses a merged model that retains the structure of the source models while detecting their common parts. It identifies best practices using query constructs and ranking criteria to group the source models' elements and to evaluate these groups. We provide a conceptualization of the method and demonstrate its functionality using an artificial example. We describe our implementation of the method in a software prototype and report on its evaluation in a workshop with domain and method experts who applied the method to real-world process models. (C) 2019 Elsevier Ltd. All rights reserved.
机译:业务流程管理通常使用参考模型来改进进程或创建单个流程模型时的起点。目前的学术文献主要提供了开发这些参考模型的推动方法,尽管某些方法从一组单独的流程模型感应地开发参考模型,专注于导出和代表普通实践。然而,没有归纳方法,可以检测最佳实践并在参考模型中代表它们。本文通过提出一种方法来解决该研究差距来开发参考过程模型,该方法是半自动地和禁用性地代表公共主管部门的最佳实践。该方法使用合并的模型,其在检测到它们的公共部分时保留源模型的结构。它识别使用查询构造和排序标准来对源模型的元素进行排序和评估这些组的最佳实践。我们提供了方法的概念化,并使用人工示例展示其功能。我们描述了我们在软件原型中的方法的实现,并在与域和方法专家的研讨会中的评估报告,他们将该方法应用于现实世界的过程模型。 (c)2019 Elsevier Ltd.保留所有权利。

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