首页> 外文期刊>Electronic Journal of Statistics >Sharp minimax tests for large covariance matrices and adaptation
【24h】

Sharp minimax tests for large covariance matrices and adaptation

机译:针对大型协方差矩阵和自适应的清晰的minimax测试

获取原文
       

摘要

We consider the detection problem of correlations in a $p$-dimensional Gaussian vector, when we observe $n$ independent, identically distributed random vectors, for $n$ and $p$ large. We assume that the covariance matrix varies in some ellipsoid with parameter $lpha >1/2$ and total energy bounded by $L>0$. We propose a test procedure based on a U-statistic of order 2 which is weighted in an optimal way. The weights are the solution of an optimization problem, they are constant on each diagonal and non-null only for the $T$ first diagonals, where $T=o(p)$. We show that this test statistic is asymptotically Gaussian distributed under the null hypothesis and also under the alternative hypothesis for matrices close to the detection boundary. We prove upper bounds for the total error probability of our test procedure, for $lpha>1/2$ and under the assumption $T=o(p)$ which implies that $n=o(p^{2lpha})$. We illustrate via a numerical study the behavior of our test procedure. Moreover, we prove lower bounds for the maximal type II error and the total error probabilities. Thus we obtain the asymptotic and the sharp asymptotically minimax separation rate $widetilde{arphi}=(C(lpha,L)n^{2}p)^{-lpha/(4lpha +1)}$, for $lpha>3/2$ and for $lpha >1$ together with the additional assumption $p=o(n^{4lpha -1})$, respectively. We deduce rate asymptotic minimax results for testing the inverse of the covariance matrix. We construct an adaptive test procedure with respect to the parameter $lpha$ and show that it attains the rate $widetilde{psi}=(n^{2}p/lnln(nsqrt{p}))^{-lpha/(4lpha +1)}$.
机译:当我们观察到$ n $和$ p $大的$ n $独立,相同分布的随机向量时,我们考虑了$ p $维高斯向量中相关性的检测问题。我们假设协方差矩阵在某些椭球体中变化,参数$ alpha> 1/2 $,总能量以$ L> 0 $为界。我们基于2阶U统计量提出了一种测试过程,该过程以最佳方式加权。权重是优化问题的解决方案,权重在每个对角线上都是恒定的,并且仅对于$ T $第一个对角线为非零,其中$ T = o(p)$。我们表明,该检验统计量在零假设和接近检测边界的矩阵的替代假设下呈渐近高斯分布。对于$ alpha> 1/2 $并在$ T = o(p)$的假设下,我们证明了测试过程的总错误概率的上限,这意味着$ n = o(p ^ {2 alpha} )$。我们通过数值研究说明了我们测试程序的行为。此外,我们证明了最大II型错误和总错误概率的下界。因此,我们获得了渐近和尖锐的渐近最小极大分离率$ widetilde { varphi} =(C( alpha,L)n ^ {2} p)^ {- alpha /(4 alpha +1)} $ ,分别用于$ alpha> 3/2 $和$ alpha> 1 $以及附加假设$ p = o(n ^ {4 alpha -1})$。我们推导出速率渐近极大极小值结果,以测试协方差矩阵的逆。我们针对参数$ alpha $构造了一个自适应测试程序,并表明它达到了速率$ widetilde { psi} =(n ^ {2} p / ln ln(n sqrt {p}) )^ {- alpha /(4 alpha +1)} $。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号