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Smooth Splicing: A Robust SNN-Based Method for Clustering High-Dimensional Data

机译:平滑拼接:基于SNN的鲁棒高维数据聚类方法

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Sharing nearest neighbor (SNN) is a novel metric measure of similarity, and it can conquer two hardships: the low similarities between samples and the different densities of classes. At present, there are two popular SNN similarity based clustering methods: JP clustering and SNN density based clustering. Their clustering results highly rely on the weighting value of the single edge, and thus they are very vulnerable. Motivated by the idea of smooth splicing in computing geometry, the authors design a novel SNN similarity based clustering algorithm within the structure of graph theory. Since it inherits complementary intensity-smoothness principle, its generalizing ability surpasses those of the previously mentioned two methods. The experiments on text datasets show its effectiveness.
机译:共享最近邻(SNN)是一种新的相似度度量标准,它可以克服两个难题:样本之间的相似度低和类的密度不同。当前,有两种流行的基于SNN相似度的聚类方法:JP聚类和基于SNN密度的聚类。它们的聚类结果高度依赖于单边的加权值,因此它们非常脆弱。受计算几何中平滑拼接的想法启发,作者在图论的结构内设计了一种新颖的基于SNN相似度的聚类算法。由于它继承了互补的强度-平滑原理,因此其泛化能力超过了前面提到的两种方法。文本数据集上的实验表明了其有效性。

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