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Distance metric learning for soft subspace clustering in composite kernel space

机译:复合核空间中软子空间聚类的距离度量学习

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Soft subspace clustering algorithms have been successfully used for high dimensional data in recent years. However, the existing algorithms often utilize only one distance function to evaluate the distance between data items on each feature, which cannot deal with datasets with complex inner structures. In this paper, a composite kernel space (CKS) is constructed based on a set of basis kernels and a novel framework of soft subspace clustering is proposed by integrating distance metric learning in the CKS. Two soft subspace clustering algorithms, i.e., entropy weighting fuzzy clustering in CKS for kernel space (CKS-EWFC-K) and feature space (CKS-EWFC-F) are thus developed. In both algorithms, the prototype in the feature space is mapped into the CKS by multiple simultaneous mappings, one mapping for each cluster, which is distinct from existing kernel-based clustering algorithms. By evaluating the distance on each feature in the CKS, both CKS-EWFC-K and CKS-EWFC-F learn the distance function adaptively during the clustering process. Experimental results have demonstrated that the proposed algorithms in general outperform classical clustering algorithms and are immune to ineffective kernels and irrelevant features in soft subspace. (C) 2015 Elsevier Ltd. All rights reserved.
机译:近年来,软子空间聚类算法已成功用于高维数据。但是,现有算法通常仅利用一个距离函数来评估每个要素上的数据项之间的距离,而这无法处理具有复杂内部结构的数据集。本文基于一组基础内核构建了一个复合内核空间(CKS),并通过将距离度量学习集成到CKS中,提出了一种新的软子空间聚类框架。因此,开发了两种软子空间聚类算法,即用于内核空间(CKS-EWFC-K)和特征空间(CKS-EWFC-F)的CKS中的熵加权模糊聚类。在这两种算法中,特征空间中的原型都通过多个同时映射映射到CKS中,每个集群一个映射,这与现有的基于内核的聚类算法不同。通过评估CKS中每个要素的距离,CKS-EWFC-K和CKS-EWFC-F都可以在聚类过程中自适应地学习距离函数。实验结果表明,所提出的算法在总体上优于经典聚类算法,并且不受无效子核和软子空间中无关特征的影响。 (C)2015 Elsevier Ltd.保留所有权利。

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