Title :
Geodesic Convexity and Covariance Estimation
Author_Institution :
Selim & Rachel Benin Sch. of Comput. Sci. & Eng., Hebrew Univ. of Jerusalem, Jerusalem, Israel
Abstract :
Geodesic convexity is a generalization of classical convexity which guarantees that all local minima of g-convex functions are globally optimal. We consider g-convex functions with positive definite matrix variables, and prove that Kronecker products, and logarithms of determinants are g-convex. We apply these results to two modern covariance estimation problems: robust estimation in scaled Gaussian distributions, and Kronecker structured models. Maximum likelihood estimation in these settings involves non-convex minimizations. We show that these problems are in fact g-convex. This leads to straight forward analysis, allows the use of standard optimization methods and paves the road to various extensions via additional g-convex regularization.
Keywords :
Gaussian distribution; concave programming; convex programming; covariance matrices; differential geometry; maximum likelihood estimation; Gaussian distribution; Kronecker product; Kronecker structured model; covariance estimation; g-convex function; g-convex regularization; geodesic convexity; matrix variable; maximum likelihood estimation; nonconvex minimization; optimization; Covariance matrix; Maximum likelihood estimation; Minimization; Robustness; Vectors; Elliptical distributions; Kronecker models; geodesic convexity; log-sum-exp; martix variate models; robust covariance estimation;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2012.2218241