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RESTRICTED ISOMETRY PROPERTY FOR LOW-DIMENSIONAL SUBSPACES AND ITS APPLICATION IN COMPRESSED SUBSPACE CLUSTERING

机译:用于低维子空间的受限制的等距属性及其在压缩子空间聚类中的应用

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Utilizing random matrix to reduce the dimension of data has become an attractive method in signal processing and machine learning since the boom of Compressed Sensing. One important example is compressed subspace clustering (CSC), a powerful unsupervised learning algorithm, which performs subspace clustering after random projection. In our previous work, motivated by the importance of affinity in CSC and the conjecture about whether the similarity (distance) between any two given subspaces can remain almost unchanged after random projection, we first prove the restricted isometry property of Gaussian random matrix for compressing subspaces, providing strong theoretical guarantee for the performance of CSC. However, the estimated probability bound in that work doesn't match well with the forms of RIP in other fields, e.g., compressed sensing, because the analysis skills we use are too coarse. To address this issue, we rigorously derive a nearly optimal probability bound in this paper, which can provide a more solid theoretical foundation for CSC and other subspace related problems.
机译:利用随机矩阵来降低数据的维度已成为信号处理和机器学习中的一种有吸引力的方法,因为压缩传感的吊杆。一个重要的例子是压缩子空间群集(CSC),这是一种强大的无监督学习算法,在随机投影后执行子空间群集。在我们以前的工作中,通过在CSC中亲和力的重要性和猜想在随机投影后任何两个给定子空间之间的相似性(距离)的重要性,我们首先证明了Gaussian随机矩阵的受限制的等距特性进行压缩子空间为CSC的性能提供了强大的理论保证。然而,在该工作中的估计概率绑定与其他字段中的RIP的形式不匹配,例如,压缩感测,因为我们使用的分析技能太粗糙。为了解决这个问题,我们严格得出了本文的几乎最佳的概率,这可以为CSC和其他子空间相关问题提供更加稳定的理论基础。

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