具有重复块的块对角矩阵的测量浓度

C. Rozell, H. L. Yap, J. Park, M. Wakin
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引用次数: 12

摘要

随机压缩算子的理论分析通常依赖于感兴趣算子的测度集中不等式的存在。虽然通常研究非结构化的密集矩阵,但具有更多结构的矩阵通常令人感兴趣,因为它们对传感系统的约束进行建模或允许更有效的系统实现。本文导出了块对角线矩阵的测度集中界,其中沿主对角线的非零项是单个重复的高斯随机变量块。我们的主要结果表明,在最好的情况下,浓度指数与全密集矩阵的浓度指数相同。我们还确定了信号分集在区分最佳和最差情况时所起的作用。最后,我们用一系列的实验来说明这些现象。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Concentration of measure for block diagonal matrices with repeated blocks
The theoretical analysis of randomized compressive operators often relies on the existence of a concentration of measure inequality for the operator of interest. Though commonly studied for unstructured, dense matrices, matrices with more structure are often of interest because they model constraints on the sensing system or allow more efficient system implementations. In this paper we derive a concentration of measure bound for block diagonal matrices where the nonzero entries along the main diagonal are a single repeated block of i.i.d. Gaussian random variables. Our main result states that the concentration exponent, in the best case, scales as that for a fully dense matrix. We also identify the role that the signal diversity plays in distinguishing the best and worst cases. Finally, we illustrate these phenomena with a series of experiments.
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