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Group symmetry and non-Gaussian covariance estimation

机译:群对称和非高斯协方差估计

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We consider robust covariance estimation with group symmetry constraints. Non-Gaussian covariance estimation, e.g., Tyler's scatter estimator and Multivariate Generalized Gaussian distribution methods, usually involve non-convex minimization problems. Recently, it was shown that the underlying principle behind their success is an extended form of convexity over the geodesics in the manifold of positive definite matrices. A modern approach to improve estimation accuracy is to exploit prior knowledge via additional constraints, e.g., restricting the attention to specific classes of covariances which adhere to prior symmetry structures. In this paper, we prove that such group symmetry constraints are also geodesically convex and can therefore be incorporated into various non-Gaussian covariance estimators. Practical examples of such sets include: circulant, persymmetric and complex/quaternion proper structures. We provide a simple numerical technique for finding maximum likelihood estimates under such constraints, and demonstrate their performance advantage using synthetic experiments.
机译:我们考虑具有组对称约束的鲁棒协方差估计。非高斯协方差估计,例如泰勒散射估计和多元广义高斯分布方法,通常涉及非凸最小化问题。最近,研究表明,其成功背后的基本原理是正定矩阵的流形上的测地线上的凸形式的扩展形式。一种提高估计精度的现代方法是通过附加约束来利用先验知识,例如,将注意力集中在遵守先验对称结构的特定类型的协方差上。在本文中,我们证明了这种群对称约束也是测地凸的,因此可以合并到各种非高斯协方差估计器中。这样的集合的实际例子包括:循环的,对称的和复数/四元数的固有结构。我们提供了一种简单的数值技术来找到在这种约束下的最大似然估计,并通过合成实验证明了它们的性能优势。

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