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arxiv: 2603.17527 · v2 · pith:JWVRD3L4new · submitted 2026-03-18 · 📊 stat.ML · cs.LG· math.OC

Mirror Descent on Riemannian Manifolds

classification 📊 stat.ML cs.LGmath.OC
keywords descentoptimizationstochasticframeworkmirrorriemannianlarge-scalemanifold
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Mirror Descent (MD) is a scalable first-order method widely used in large-scale optimization, with applications in image processing, policy optimization, and neural network training. This paper generalizes MD to optimization on Riemannian manifolds. In particular, we develop a Riemannian Mirror Descent (RMD) framework via reparameterization and further propose a stochastic variant of RMD. We also establish non-asymptotic convergence guarantees for both RMD and stochastic RMD. As an application to the Stiefel manifold, our RMD framework reduces to the Curvilinear Gradient Descent (CGD) method proposed in [26]. Moreover, when specializing the stochastic RMD framework to the Stiefel setting, we obtain a stochastic extension of CGD, which effectively addresses large-scale manifold optimization problems.

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