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A new Kmeans clustering model and its generalization achieved by joint spectral embedding and rotation

机译:通过联合光谱嵌入和旋转实现了一个新的邮件集群模型及其泛化

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摘要

The Kmeans clustering and spectral clustering are two popular clustering methods for grouping similar data points together according to their similarities. However, the performance of Kmeans clustering might be quite unstable due to the random initialization of the cluster centroids. Generally, spectral clustering methods employ a two-step strategy of spectral embedding and discretization postprocessing to obtain the cluster assignment, which easily lead to far deviation from true discrete solution during the postprocessing process. In this paper, based on the connection between the Kmeans clustering and spectral clustering, we propose a new Kmeans formulation by joint spectral embedding and spectral rotation which is an effective postprocessing approach to perform the discretization, termed KMSR. Further, instead of directly using the dot-product data similarity measure, we make generalization on KMSR by incorporating more advanced data similarity measures and call this generalized model as KMSR-G. An efficient optimization method is derived to solve the KMSR (KMSR-G) model objective whose complexity and convergence are provided. We conduct experiments on extensive benchmark datasets to validate the performance of our proposed models and the experimental results demonstrate that our models perform better than the related methods in most cases.
机译:邮件群集和光谱群集是两个流行的聚类方法,用于根据其相似之处对类似的数据点进行分组。但是,由于群集质心的随机初始化,kmeans群集的性能可能是非常不稳定的。通常,光谱聚类方法采用频谱嵌入和离散化的两步策略,以获得群集分配,这在后处理过程中容易导致远离真正的离散解决方案。在本文中,基于KMEANS聚类和频谱聚类之间的连接,我们通过联合光谱嵌入和光谱旋转提出了一种新的浏览器,这是一种有效的后处理方法来执行离散化,称为KMSR。此外,而不是直接使用Dot-Product数据相似度测量,通过包含更高级的数据相似度测量并将该广义模型称为KMSR-G来对KMSR进行泛化。导出了一种有效的优化方法,以解决提供了其复杂性和收敛性的KMSR(KMSR-G)模型目标。我们对广泛的基准数据集进行实验,以验证我们提出的模型的性能,实验结果表明我们的模型在大多数情况下比相关方法更好。

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