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Ensemble clustering in the belief functions framework

机译:在信念函数框架中集成聚类

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摘要

In this paper, belief functions, defined on the lattice of intervals partitions of a set of objects, are investigated as a suitable framework for combining multiple clusterings. We first show how to represent clustering results as masses of evidence allocated to sets of partitions. Then a consensus belief function is obtained using a suitable combination rule. Tools for synthesizing the results are also proposed. The approach is illustrated using synthetic and real data sets.
机译:在本文中,研究了在一组对象的间隔分区的格上定义的置信函数,作为组合多个聚类的合适框架。我们首先展示如何将聚类结果表示为分配给分区集的大量证据。然后,使用合适的组合规则获得共识置信函数。还提出了用于合成结果的工具。使用综合和真实数据集说明了该方法。

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