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A Set-Medoids Vector Batch SOM Algorithm Based on Multiple Dissimilarity Matrices

机译:基于多个相异矩阵的集合质点矢量批量SOM算法

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This paper gives a batch SOM algorithm that is able to training a Kohonen map taking into account simultaneously several dissimilarity matrices, that are obtained using different sets of variables and dissimilarity functions. This algorithm is designed to provide a partition and a set-medoids vector representative for each cluster, and learn a relevance weight on the training for each dissimilarity matrix by optimizing an objective function. These relevance weights change at each algorithm's iteration and are different from one cluster to another. The proposed algorithm provides a collaborative role of the different dissimilarity matrices, aiming to cluster and visualizing the data while preserving their topology. Several examples illustrate the usefulness of the proposed algorithm.
机译:本文给出了一种批处理SOM算法,该算法能够同时考虑使用不同变量集和不相似函数获得的多个不相似矩阵来训练Kohonen映射。该算法旨在为每个聚类提供一个分区和一个代表集合的向量,并通过优化目标函数为每个相异矩阵学习训练的相关权重。这些相关性权重在每种算法的迭代过程中都会发生变化,并且在一个群集与另一个群集之间是不同的。所提出的算法提供了不同相异性矩阵的协同作用,旨在对数据进行聚类和可视化,同时保留其拓扑。几个例子说明了所提出算法的有效性。

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