학술논문

Interior-point methods on manifolds: theory and applications
Document Type
Working Paper
Source
2023 IEEE 64th Annual Symposium on Foundations of Computer Science (FOCS 2023)
Subject
Mathematics - Optimization and Control
Computer Science - Data Structures and Algorithms
Mathematics - Differential Geometry
Language
Abstract
Interior-point methods offer a highly versatile framework for convex optimization that is effective in theory and practice. A key notion in their theory is that of a self-concordant barrier. We give a suitable generalization of self-concordance to Riemannian manifolds and show that it gives the same structural results and guarantees as in the Euclidean setting, in particular local quadratic convergence of Newton's method. We analyze a path-following method for optimizing compatible objectives over a convex domain for which one has a self-concordant barrier, and obtain the standard complexity guarantees as in the Euclidean setting. We provide general constructions of barriers, and show that on the space of positive-definite matrices and other symmetric spaces, the squared distance to a point is self-concordant. To demonstrate the versatility of our framework, we give algorithms with state-of-the-art complexity guarantees for the general class of scaling and non-commutative optimization problems, which have been of much recent interest, and we provide the first algorithms for efficiently finding high-precision solutions for computing minimal enclosing balls and geometric medians in nonpositive curvature.
Comment: 85 pages. v2: Merged with independent work arXiv:2212.10981 by Hiroshi Hirai