Compressed Spectral Clustering

Bin Zhao, Changshui Zhang
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引用次数: 4

Abstract

Compressed sensing has received much attention in both data mining and signal processing communities. In this paper, we provide theoretical results to show that compressed spectral clustering, separating data samples into different clusters directly in the compressed measurement domain, is possible. Specifically, we provide theoretical bounds guaranteeing that if the data is measured directly in the compressed domain, spectral clustering on the compressed data works almost as well as that in the data domain. Moreover, we show that for a family of well-known compressed sensing matrices, compressed spectral clustering is universal, i. e., clustering in the measurement domain works provided that the data are sparse in some, even unknown, basis. Finally, experimental results on both toy and real world data sets demonstrate that compressed spectral clustering achieves comparable clustering performance with traditional spectral clustering that works directly in the data domain, with much less computational time.
压缩光谱聚类
压缩感知在数据挖掘和信号处理领域受到了广泛的关注。在本文中,我们提供的理论结果表明,压缩光谱聚类,将数据样本直接分成不同的簇在压缩测量域,是可能的。具体来说,我们提供了理论边界,保证如果在压缩域中直接测量数据,则压缩数据上的谱聚类几乎与数据域中的谱聚类一样好。此外,我们还证明了对于一系列众所周知的压缩感知矩阵,压缩光谱聚类是通用的,即,如果数据在某些甚至未知的基上是稀疏的,那么在测量域的聚类是有效的。最后,在玩具和真实世界数据集上的实验结果表明,压缩光谱聚类与直接在数据域中工作的传统光谱聚类具有相当的聚类性能,并且计算时间要少得多。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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