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Clustering disjoint subspaces via sparse representation

机译:通过稀疏表示对不相交的子空间进行聚类

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Given a set of data points drawn from multiple low-dimensional linear subspaces of a high-dimensional space, we consider the problem of clustering these points according to the subspaces they belong to. Our approach exploits the fact that each data point can be written as a sparse linear combination of all the other points. When the subspaces are independent, the sparse coefficients can be found by solving a linear program. However, when the subspaces are disjoint, but not independent, the problem becomes more challenging. In this paper, we derive theoretical bounds relating the principal angles between the subspaces and the distribution of the data points across all the subspaces under which the coefficients are guaranteed to be sparse. The clustering of the data is then easily obtained from the sparse coefficients. We illustrate the validity of our results through simulation experiments.
机译:给定一组从高维空间的多个低维线性子空间中提取的数据点,我们考虑根据它们所属的子空间对这些点进行聚类的问题。我们的方法利用了以下事实:每个数据点都可以写为所有其他点的稀疏线性组合。当子空间独立时,可以通过求解线性程序来找到稀疏系数。但是,当子空间不相交但不是独立的时,问题就变得更具挑战性。在本文中,我们推导出理论上的界线,这些界线与子空间之间的主角和所有子空间上的数据点的分布有关,在这些子空间上,系数被保证是稀疏的。然后可以从稀疏系数轻松获得数据的聚类。我们通过仿真实验说明了我们的结果的有效性。

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