NIPS Proceedingsβ

A new metric on the manifold of kernel matrices with application to matrix geometric means

Part of: Advances in Neural Information Processing Systems 25 (NIPS 2012)

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Symmetric positive definite (spd) matrices are remarkably pervasive in a multitude of scientific disciplines, including machine learning and optimization. We consider the fundamental task of measuring distances between two spd matrices; a task that is often nontrivial whenever an application demands the distance function to respect the non-Euclidean geometry of spd matrices. Unfortunately, typical non-Euclidean distance measures such as the Riemannian metric $\riem(X,Y)=\frob{\log(X\inv{Y})}$, are computationally demanding and also complicated to use. To allay some of these difficulties, we introduce a new metric on spd matrices: this metric not only respects non-Euclidean geometry, it also offers faster computation than $\riem$ while being less complicated to use. We support our claims theoretically via a series of theorems that relate our metric to $\riem(X,Y)$, and experimentally by studying the nonconvex problem of computing matrix geometric means based on squared distances.