Robust Spectral Clustering via Sparse Representation

Xiaodong Feng
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引用次数: 3

Abstract

Clustering high-dimensional data has been a challenging problem in data mining and machining learning. Spectral clustering via sparse representation has been proposed for clustering high-dimensional data. A critical step in spectral clustering is to effectively construct a weight matrix by assessing the proximity between each pair of objects. While sparse representation proves its effectiveness for compressing high-dimensional signals, existing spectral clustering algorithms based on sparse representation use those sparse coefficients directly. We believe that the similarity measure exploiting more global information from the coefficient vectors will provide more truthful similarity among data objects. The intuition is that the sparse coefficient vectors corresponding to two similar objects are similar and those of two dissimilar objects are also dissimilar. In particular, we propose two approaches of weight matrix construction according to the similarity of the sparse coefficient vectors. Experimental results on several real-world high-dimensional data sets demonstrate that spectral clustering based on the proposed similarity matrices outperforms existing spectral clustering algorithms via sparse representation.
基于稀疏表示的鲁棒谱聚类
高维数据聚类一直是数据挖掘和加工学习中的一个具有挑战性的问题。基于稀疏表示的光谱聚类方法被提出用于高维数据的聚类。光谱聚类的一个关键步骤是通过评估每对目标之间的接近度来有效地构建权矩阵。虽然稀疏表示在压缩高维信号方面证明了其有效性,但现有的基于稀疏表示的谱聚类算法直接使用这些稀疏系数。我们认为,从系数向量中挖掘更多全局信息的相似度度量将提供更真实的数据对象之间的相似度。直觉上,两个相似的物体对应的稀疏系数向量是相似的,两个不相似的物体对应的稀疏系数向量也是不相似的。特别地,我们提出了两种基于稀疏系数向量相似度的权矩阵构造方法。在多个真实高维数据集上的实验结果表明,基于相似矩阵的谱聚类优于现有的基于稀疏表示的谱聚类算法。
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