Density-based Kernel Scale estimation for Kernel clustering

S. Sellah, O. Nasraoui
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Abstract

Kernel clustering methods have been used successfully to cluster non linearly separable data. In this paper, we propose a modification of the Kernel K-means, called the Multi-Scale Kernel K-means, that addresses one important challenge, which is the automated estimation of the kernel scale parameters for data containing clusters with different scale values. We propose a novel method that estimates the local kernel scales using the local data density in the original space to learn an adaptive and localized kernel function. Our experimental results with the Multi-Scale Kernel K-means show significant enhancements over the standard Kernel K-means for data sets containing clusters with varying scales and densities.
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核聚类中基于密度的核尺度估计
核聚类方法已成功地用于非线性可分数据的聚类。在本文中,我们提出了一种核尺度K-means的改进,称为多尺度核尺度K-means,它解决了一个重要的挑战,即对包含不同尺度值的簇的数据的核尺度参数的自动估计。我们提出了一种利用原始空间中的局部数据密度估计局部核尺度来学习自适应和局部核函数的新方法。我们的实验结果表明,对于包含不同规模和密度的簇的数据集,多尺度核K-means比标准核K-means有显著的增强。
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