Are We Modeling the Evidence or Our Own Biases? A Comparison of Conceptual Models Created from Reports

A. Freund, P. Giabbanelli
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引用次数: 4

Abstract

Conceptual modeling requires expertise in the application area and in modeling. Many research groups fulfill this requirement by analyzing qualitative data produced by subject matter experts and constructing their own representations of this evidence base as conceptual models. The final models are often portrayed as objective and directly based on the evidence, suggesting that modelers are merely vessels through which qualitative data becomes structured as a model. In this paper, we measure for the first time the extent to which a final model is shaped by the modeler's own interpretation. To analyze differences among modelers, we (i) compare the conceptual models produced individually in terms of structure and semantics and (ii) track knowledge provenance by automatically comparing which parts of the evidence base were utilized. Results demonstrate that modelers may interpret the evidence base differently, which stresses the need to disclose how modelers translate evidence before engaging in knowledge aggregation.
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我们是在模仿证据还是我们自己的偏见?从报告中创建概念模型的比较
概念建模需要应用领域和建模方面的专业知识。许多研究小组通过分析主题专家产生的定性数据,并将这些证据基础作为概念模型构建自己的表示,来满足这一要求。最终的模型通常被描绘成客观的,直接基于证据,这表明建模者仅仅是一个容器,通过它,定性数据被结构化为一个模型。在本文中,我们首次测量了建模者自己的解释在多大程度上塑造了最终模型。为了分析建模者之间的差异,我们(i)在结构和语义方面比较单独产生的概念模型,(ii)通过自动比较哪些部分的证据库被利用来跟踪知识来源。结果表明,建模者可能会对证据库进行不同的解释,这就强调了在进行知识聚合之前,需要披露建模者如何翻译证据。
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