First-order Methods for Geodesically Convex Optimization
Abstract
Geodesic convexity generalizes the notion of (vector space) convexity to nonlinear metric spaces. But unlike convex optimization, geodesically convex (g-convex) optimization is much less developed. In this paper we contribute to the understanding of g-convex optimization by developing iteration complexity analysis for several first-order algorithms on Hadamard manifolds. Specifically, we prove upper bounds for the global complexity of deterministic and stochastic (sub)gradient methods for optimizing smooth and nonsmooth g-convex functions, both with and without strong g-convexity. Our analysis also reveals how the manifold geometry, especially \emph{sectional curvature}, impacts convergence rates. To the best of our knowledge, our work is the first to provide global complexity analysis for first-order algorithms for general g-convex optimization.
Cite
@article{arxiv.1602.06053,
title = {First-order Methods for Geodesically Convex Optimization},
author = {Hongyi Zhang and Suvrit Sra},
journal= {arXiv preprint arXiv:1602.06053},
year = {2016}
}
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21 pages