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arxiv: 1906.07355 · v1 · pith:HLIWINTNnew · submitted 2019-06-18 · 🧮 math.OC · cs.LG· stat.ML

Escaping from saddle points on Riemannian manifolds

classification 🧮 math.OC cs.LGstat.ML
keywords ratemanifoldriemannianconvergencedependsepsilonfunctionhence
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We consider minimizing a nonconvex, smooth function $f$ on a Riemannian manifold $\mathcal{M}$. We show that a perturbed version of Riemannian gradient descent algorithm converges to a second-order stationary point (and hence is able to escape saddle points on the manifold). The rate of convergence depends as $1/\epsilon^2$ on the accuracy $\epsilon$, which matches a rate known only for unconstrained smooth minimization. The convergence rate depends polylogarithmically on the manifold dimension $d$, hence is almost dimension-free. The rate also has a polynomial dependence on the parameters describing the curvature of the manifold and the smoothness of the function. While the unconstrained problem (Euclidean setting) is well-studied, our result is the first to prove such a rate for nonconvex, manifold-constrained problems.

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