稀疏信号下高维协方差检验的锐最优性

S. Chen, Yumou Qiu, Shuyi Zhang
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摘要

本文考虑了高维协方差矩阵的单样本测试,推导出了作为稀疏替代假设下信号稀疏度和信号强度函数的检测边界。它首先表明,检测稀疏均值的最佳检测边界是检测协方差矩阵的最小检测下边界。研究提出了一种多层次阈值检验,并证明它能在稀疏参数的很大范围内达到检测下限,这意味着多层次阈值检验在这个范围内是最小最优的。为了处理样本协方差矩阵元素之间的复杂依赖关系,结合矩阵阻塞和耦合技术,通过开发一种新颖的 U 统计分解,得出了协方差矩阵的多级阈值老化统计量在高斯和非高斯分布下的渐近分布。此外,还证明了多级阈值检验的检测边界优于现有检验。
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Sharp optimality for high-dimensional covariance testing under sparse signals
This paper considers one-sample testing of a high-dimensional covariance matrix by deriving the detection boundary as a function of the signal sparsity and signal strength under the sparse alternative hypotheses. It first shows that the optimal detection boundary for testing sparse means is the minimax detection lower boundary for testing the covariance matrix. A multilevel thresholding test is proposed and is shown to be able to attain the detection lower boundary over a substantial range of the sparsity parameter, implying that the multilevel thresholding test is sharp optimal in the minimax sense over the range. The asymptotic distribution of the multilevel thresh-olding statistic for covariance matrices is derived under both Gaussian and non-Gaussian distributions by developing a novel U -statistic decomposition in conjunction with the matrix blocking and the coupling techniques to handle the complex dependence among the elements of the sample covariance matrix. The superiority in the detection boundary of the multilevel thresholding test over the existing tests is also demonstrated.
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