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How to Control Clustering Results? Flexible Clustering Aggregation

机译:如何控制聚类结果?灵活的聚类聚合

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One of the most important and challenging questions in the area of clustering is how to choose the best-fitting algorithm and parameterization to obtain an optimal clustering for the considered data. The clustering aggregation concept tries to bypass this problem by generating a set of separate, heterogeneous partitionings of the same data set, from which an aggregate clustering is derived. As of now, almost every existing aggregation approach combines given crisp clusterings on the basis of pair-wise similarities. In this paper, we regard an input set of soft clusterings and show that it contains additional information that is efficiently useable for the aggregation. Our approach introduces an expansion of mentioned pair-wise similarities, allowing control and adjustment of the aggregation process and its result. Our experiments show that our flexible approach offers adaptive results, improved identification of structures and high usability.
机译:聚类领域中最重要和最具挑战性的问题之一是如何选择最佳拟合算法和参数化,以获得所考虑的数据的最佳聚类。群集聚合概念通过生成相同数据集的一组单独的异构划分来绕过该问题,从中导出聚合群集。截至目前,几乎每个现有的聚合方法都基于成对的相似之处组合了Crisp群集。在本文中,我们考虑了一组软群集,并表明它包含有效地用于聚合的附加信息。我们的方法介绍了提到的一对相似性的扩展,允许控制和调整聚合过程及其结果。我们的实验表明,我们的灵活方法提供了适应性结果,改进了结构的识别和高可用性。

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