Subgradient Methods on Manifolds with Lower Bounded Curvature

Abstract

The subgradient method is a classical and foundational approach in non-smooth convex optimization; its simplicity, robustness, and role as a conceptual and algorithmic starting point have made it the backbone of many significant optimization algorithms. Motivated by classical Euclidean results and recent advances in first-order Riemannian optimization, we study the convergence of the subgradient method on Hadamard manifolds with lower bounded curvature. Assuming a nonempty solution set and employing a corresponding non-summable diminishing step-size condition, we establish convergence of the generated sequence \xk\ to a minimizer whenever at least one of the following holds: (a) the sequence \xk\ is bounded; (b) the solution set S is bounded; or (c) the step-sizes are square-summable (Σk=1∞λk2<∞). Additionally, we prove that if int(S)≠, the method achieves finite termination. Our main contribution provides a Riemannian counterpart to Shepilov's Euclidean analysis [Cybernetics, 12 (1976), pp. 544-548], thus complementing existing literature on convex minimization over manifolds with lower bounded curvature.

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