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Relational partitioning fuzzy clustering algorithms based on multiple dissimilarity matrices

机译:基于多个不相似矩阵的关系划分模糊聚类算法

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This paper introduces fuzzy clustering algorithms that can partition objects taking into account simultaneously their relational descriptions given by multiple dissimilarity matrices. The aim is to obtain a collaborative role of the different dissimilarity matrices to get a final consensus partition. These matrices can be obtained using different sets of variables and dissimilarity functions. These algorithms are designed to furnish a partition and a prototype for each fuzzy cluster as well as to learn a relevance weight for each dissimilarity matrix by optimizing an adequacy criterion that measures the fit between the fuzzy clusters and their representatives. These relevance weights change at each algorithm iteration and can either be the same for all fuzzy clusters or different from one fuzzy cluster to another. Experiments with real-valued data sets from the UCI Machine Learning Repository as well as with interval-valued and histogram-valued data sets show the usefulness of the proposed fuzzy clustering algorithms.
机译:本文介绍了模糊聚类算法,该算法可以同时考虑对象的相关描述(由多个不相似矩阵给出)来对对象进行分区。目的是获得不同相异性矩阵的协同作用,以获得最终的共识分区。可以使用变量和不相似函数的不同集合来获得这些矩阵。这些算法旨在为每个模糊聚类提供分区和原型,并通过优化衡量模糊聚类及其代表之间的契合度的充分性准则,为每个相异矩阵学习相关权重。这些相关性权重在每次算法迭代时都会更改,并且对于所有模糊聚类可以相同,也可以在一个模糊聚类之间相互不同。使用UCI机器学习存储库中的实值数据集以及区间值和直方图值数据集进行的实验表明,提出的模糊聚类算法非常有用。

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