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Automatic generation of classes-interpretation as a bridge between clustering and decision-making

机译:自动生成类解释,作为聚类和决策之间的桥梁

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Understanding the meaning of the classes outcomming from a clustering method is one of the critical aspects to guarantee both the validity of the clustering results and their usefulness. The methodology of conceptual characterisation by embedded conditioning (CCEC), is a proposal for building conceptual interpretations of hierarchical clustering that contributes to enshort the gap between the clustering itself and the further decision-making processes. The methodology uses some statistical tools (as the boxplot multiple, introduced by Tukey) together with some machine learning methods, to learn the structure of the data; and find the characterising variables (previously introduced by Gibert) of the classes when they exist, whereas providing alternatives when they do not exist. In this paper, the pillars of the methodology are presented, as well as different criteria for knowledge integration. The usefulness of CCEC for building domain theories as models supporting later decision-making is addressed. The proposal is applied for building the interpretation of a set of classes extracted from a waste water treatment plant (WWTP) and the results obtained with the different criteria are compared and discussed.
机译:理解从聚类方法得出的类的含义是确保聚类结果的有效性及其实用性的关键方面之一。通过嵌入式条件(CCEC)进行概念表征的方法是一种建议,用于构建层次聚类的概念解释,有助于缩小聚类本身与其他决策过程之间的差距。该方法使用一些统计工具(由Tukey引入的箱形图倍数)和一些机器学习方法一起来学习数据的结构;并在类存在时找到它们的特征变量(先前由Gibert引入),而在不存在时提供替代变量。在本文中,介绍了方法论的基础以及知识整合的不同标准。讨论了CCEC在将领域理论构建为支持后续决策的模型方面的有用性。该提案用于对从废水处理厂(WWTP)提取的一组类别进行解释,并比较和讨论了使用不同标准获得的结果。

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