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Tyler's Covariance Matrix Estimator in Elliptical Models With Convex Structure

机译:具有凸结构的椭圆模型中的泰勒协方差矩阵估计

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摘要

We address structured covariance estimation in elliptical distributions by assuming that the covariance is a priori known to belong to a given convex set, e.g., the set of Toeplitz or banded matrices. We consider the General Method of Moments (GMM) optimization applied to robust Tyler's scatter M-estimator subject to these convex constraints. Unfortunately, GMM turns out to be non-convex due to the objective. Instead, we propose a new COCA estimator—a convex relaxation which can be efficiently solved. We prove that the relaxation is tight in the unconstrained case for a finite number of samples, and in the constrained case asymptotically. We then illustrate the advantages of COCA in synthetic simulations with structured compound Gaussian distributions. In these examples, COCA outperforms competing methods such as Tyler's estimator and its projection onto the structure set.
机译:我们通过假设协方差是已知属于给定凸集(例如Toeplitz或带状矩阵的集合)的先验知识来解决椭圆形分布中的结构协方差估计。我们考虑了在这些凸约束条件下,适用于鲁棒泰勒散射M估计量的通用矩(GMM)优化方法。不幸的是,由于该目标,GMM证明是非凸的。相反,我们提出了一种新的COCA估计器-可以有效解决的凸松弛。我们证明了对于有限数量的样本,在无约束情况下,并且在渐近约束情况下,松弛是紧密的。然后,我们在结构化复合高斯分布的合成模拟中说明了COCA的优势。在这些示例中,COCA的表现优于其他方法,例如Tyler估计量及其在结构集上的投影。

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