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On sparsity scales and covariance matrix transformations

机译:在稀疏性尺度和协方差矩阵变换

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We develop a theory of covariance and concentration matrix estimation on any given or estimated sparsity scale when the matrix dimension is larger than the sample size. Nonstandard sparsity scales are justified when such matrices are nuisance parameters, distinct from interest parameters, which should always have a direct subject-matter interpretation. The matrix logarithmic and inverse scales are studied as special cases, with the corollary that a constrained optimization-based approach is unnecessary for estimating a sparse concentration matrix. It is shown through simulations that for large unstructured covariance matrices, there can be appreciable advantages to estimating a sparse approximation to the log-transformed covariance matrix and converting the conclusions back to the scale of interest.
机译:当矩阵尺寸大于样本大小时,我们在任何给定或估计的稀疏性比例上制定协方差和浓度矩阵估计的理论。 当这种矩阵是滋扰参数时,非标准的稀疏性尺度是合理的,与兴趣参数不同,这应该始终具有直接主题解释。 矩阵对数和逆尺度被研究为特殊情况,是基于结构的必要性,不需要估计稀疏浓度矩阵。 它通过模拟示出了对于大型非结构化协方差矩阵,可以有明显的优点来估计到对数转换的协方差矩阵并将结论转换回感兴趣的规模。

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