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Hierarchical Distance-Based Conceptual Clustering

机译:基于分层距离的概念聚类

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In this work we analyse the relation between hierarchical distance-based clustering and the concepts that can be obtained from the hierarchy by generalisation. Many inconsistencies may arise, because the distance and the conceptual generalisation operator are usually incompatible. To overcome this, we propose an algorithm which integrates distance-based and conceptual clustering. The new dendrograms can show when an element has been integrated to the cluster because it is near in the metric space or because it is covered by the concept. In this way, the new clustering can differ from the original one but the metric traceability is clear. We introduce three different levels of agreement between the clustering hierarchy obtained from the linkage distance and the new hierarchy, and we define properties these generalisation operators should satisfy in order to produce distance-consistent dendrograms.
机译:在这项工作中,我们通过泛化分析基于分层距离的群集和可以从层次结构获得的概念之间的关系。可能出现许多不一致,因为距离和概念泛化操作员通常不兼容。为了克服这一点,我们提出了一种集成距离和概念聚类的算法。新的树形图可以在将元素集成到群集时显示,因为它在公制空间附近或因为它被概念覆盖。以这种方式,新的聚类可以与原始的聚类不同,但度量可追溯性很清楚。我们在从联动距离和新层次结构获得的聚类层次结构之间介绍了三个不同级别的协议,我们定义了这些泛化运营商应该满足的属性,以便产生距离 - 一致的树枝图。

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