Riemannian Gaussian distributions were initially introduced as basic building blocks for learning models which aim to capture the intrinsic structure of statistical populations of positive-definite matrices (here called covariance matrices). While the potential applications of such models have attracted significant attention, a major obstacle still stands in the way of these applications: there seems to exist no practical method of computing the normalising factors associated with Riemannian Gaussian distributions on spaces of high-dimensional covariance matrices. The present paper shows that this missing method comes from an unexpected new connection with random matrix theory. Its main contribution is to prove that Riemannian Gaussian distributions of real, complex, or quaternion covariance matrices are equivalent to orthogonal, unitary, or symplectic log-normal matrix ensembles. This equivalence yields a highly efficient approximation of the normalising factors, in terms of a rather simple analytic expression. The error due to this approximation decreases like the inverse square of dimension. Numerical experiments are conducted which demonstrate how this new approximation can unlock the difficulties which have impeded applications to real-world datasets of high-dimensional covariance matrices. The paper then turns to Riemannian Gaussian distributions of block-Toeplitz covariance matrices. These are equivalent to yet another kind of random matrix ensembles, here called "acosh-normal" ensembles. Orthogonal and unitary "acosh-normal" ensembles correspond to the cases of block-Toeplitz with Toeplitz blocks, and block-Toeplitz (with general blocks) covariance matrices, respectively.
翻译:Riemannian Gaussian 分布最初被引入为学习模型的基本构件。 学习模型旨在捕捉正偏差矩阵( 这里称为共变矩阵)统计群的内在结构。 虽然这些模型的潜在应用引起了人们的极大关注, 但一个主要障碍仍然是这些应用的方式: 似乎不存在计算与Riemannian Gaussian 分布在高维变量矩阵空间上相关的正常因素的实用方法。 本文显示, 这个缺失的方法来自一个意想不到的与随机矩阵理论的新连接。 它的主要贡献是证明 Riemannian Gaussian 真实、 复杂、 或 之四差差差矩阵矩阵矩阵的内在结构结构结构结构结构的内在结构结构结构结构的内在结构结构结构结构结构结构结构结构。 这个等等值使得正常因素在高维变量结构矩阵的分布上非常高效地接近正常因素。 新的近似于反正平差矩阵的矩阵结构结构结构结构结构结构结构, 而新的近近近似于真实的纸体内部结构结构结构结构结构 。