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On the Identification of Modeler Communities

机译:关于建模者社区的识别

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摘要

The authors discuss the use and challenges of identifying communities with shared semantics in Enterprise Modeling (EM). People tend to understand modeling meta-concepts (i.e., a modeling language s constructs or types) in a certain way and can be grouped by this conceptual understanding. Having an insight into the typical communities and their composition (e.g., what kind of people constitute such a semantic community) can make it easier to predict how a conceptual modeler with a certain background will generally understand the meta-concepts s/he uses, which is useful for e.g., validating model semantics and improving the efficiency of the modeling process itself. The authors have observed that inpractice decisions to group people based on certain shared properties are often made, but are rarely backed up by empirical data demonstrating their supposed efficacy. The authors demonstrate the use of psychometric data from two studies involving experienced (enterprise) modeling practitioners and computing science students to find such communities. The authors also discuss the challenge that arises in finding common real-world factors shared between their members to identify them by and conclude that there is no empirical support for commonly used (and often implicit) grouping properties such as similar background, focus and modeling language.
机译:作者讨论了在企业建模(EM)中使用共享语义识别社区的用途和挑战。人们倾向于以某种方式理解建模元概念(即建模语言的构造或类型),并且可以通过这种概念上的理解进行分组。深入了解典型社区及其组成(例如,什么样的人构成了这样的语义社区),可以更轻松地预测具有一定背景的概念建模者通常如何理解他/他使用的元概念。例如对于验证模型语义和提高建模过程本身的效率很有用。作者观察到,通常会基于某些共享属性做出对人进行分组的不切实际的决策,但是很少有经验数据来证明他们的假定功效,因此无法做出决定。作者演示了来自两项研究的心理学数据的使用,该研究涉及经验丰富的(企业)建模从业人员和计算机科学专业的学生,​​以找到这样的社区。作者还讨论了在寻找成员之间共享的现实世界共同因素以进行识别时所面临的挑战,并得出结论认为,对常用(且通常是隐式)分组属性(例如相似的背景,焦点和建模语言)没有经验支持。

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