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Cluster Validation in Linear Fuzzy Clustering of Relational Data from Multi-cluster Principal Coordinate Analysis View Point

机译:来自多簇主坐标分析视点的关系数据线性模糊聚类中的群集验证

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This paper considers a new approach to cluster validation in linear fuzzy clustering of relational data. Considering the close connection between linear fuzzy clustering and local PCA, the relational clustering model can be regarded as a multi-cluster MDS model. In the new cluster validation approach, the quality of fuzzy partitions is measured from the multi-cluster principal coordinate analysis view point, in which the reconstructed low dimensional substructure in each cluster is compared with the result of principal coordinate analysis considering fuzzy membership degrees to the cluster.
机译:本文考虑了关系数据线性模糊聚类中的群集验证方法。考虑线性模糊群集和本地PCA之间的密切连接,关系群集模型可以被视为多簇MDS模型。在新的集群验证方法中,模糊分区的质量是从多簇主坐标分析视图测量的,其中将每个集群中的重建的低维子结构与主要坐标分析考虑到模糊会员度数到的结果进行比较簇。

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