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A hierarchical Clustering Method Based on PCA-Clusters Merging for Quasi-linear SVM

机译:基于PCA簇的分层聚类方法对准线性SVM合并

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This paper proposes an improved hierarchical clustering method based on PCA-clusters merging for quasi-linear SVM. The quasi-linear SVM is an SVM with quasi-linear kernel. It considers a nonlinear separating boundary between class labels as an approximation of multiple local linear boundaries with interpolation and the quasi-linear kernel is composited based the information of local clusters along the boundary. In order to obtain the local clusters, the proposed clustering method, first detects the nonlinear boundary based on the changes of class labels; then obtains small partitions along the nonlinear separating boundary using a hierarchical clustering; and further merges the nearest neighboring clusters distributed in one local linear boundary into one cluster according clusters distributed in one local linear boundary according to PCA-based criterion. The quasi-linear kernel is composited based on the information of local clusters. Experimental results on benchmark datasets demonstrate that the proposed method improves the classification performance efficiently.
机译:本文提出了一种基于PCA簇的改进的分层聚类方法,其合并准线性SVM。准线性SVM是具有准线性内核的SVM。它认为类标签之间的非线性分离边界作为与插值的多个本地线性边界的近似值,并且基于沿边界的局部簇的信息进行组合。为了获得本地集群,所提出的聚类方法,首先根据类标签的变化检测非线性边界;然后使用分层聚类沿非线性分离边界获取小分区;并进一步将在一个本地线性边界中分布的最近邻接簇分布在一个局部线性边界中的一个集群,根据基于PCA的标准。基于本地集群的信息进行组合的准线性内核。基准数据集的实验结果表明,所提出的方法有效地提高了分类性能。

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