Agglomerative hierarchical kernel spectral data clustering

Raghvendra Mall, R. Langone, J. Suykens
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引用次数: 5

Abstract

In this paper we extend the agglomerative hierarchical kernel spectral clustering (AH-KSC [1]) technique from networks to datasets and images. The kernel spectral clustering (KSC) technique builds a clustering model in a primal-dual optimization framework. The dual solution leads to an eigen-decomposition. The clustering model consists of kernel evaluations, projections onto the eigenvectors and a powerful out-of-sample extension property. We first estimate the optimal model parameters using the balanced angular fitting (BAF) [2] criterion. We then exploit the eigen-projections corresponding to these parameters to automatically identify a set of increasing distance thresholds. These distance thresholds provide the clusters at different levels of hierarchy in the dataset which are merged in an agglomerative fashion as shown in [1], [4]. We showcase the effectiveness of the AH-KSC method on several datasets and real world images. We compare the AH-KSC method with several agglomerative hierarchical clustering techniques and overcome the issues of hierarchical KSC technique proposed in [5].
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聚类的层次核光谱数据聚类
本文将聚类层次核谱聚类(AH-KSC[1])技术从网络扩展到数据集和图像。核谱聚类(KSC)技术在原始-对偶优化框架下建立聚类模型。对偶解导致特征分解。聚类模型包括核评估、特征向量的投影和强大的样本外扩展特性。我们首先使用平衡角拟合(BAF)[2]准则估计最优模型参数。然后我们利用与这些参数对应的特征投影来自动识别一组不断增加的距离阈值。这些距离阈值提供了数据集中不同层次的聚类,这些聚类以聚集的方式合并,如[1],[4]所示。我们展示了AH-KSC方法在多个数据集和真实世界图像上的有效性。我们将AH-KSC方法与几种聚类层次聚类技术进行了比较,克服了[5]中提出的层次KSC技术的问题。
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