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. In recent years, the proximal gradient method and its variants have been generalized to Riemannian manifolds for solving optimization problems with an additively separable structure, i. e. , \ (f + h\), where \ (f\) is continuously differentiable, and \ (h\) may be nonsmooth but convex with computationally reasonable proximal mapping. In this paper, we generalize the proximal Newton method to embedded submanifolds for solving the type of problem with \ (h (x) = \|x\|₁\). The generalization relies on the Weingarten and semismooth analysis. It is shown that the Riemannian proximal Newton method has a local superlinear convergence rate under certain reasonable assumptions. Moreover, a hybrid version is given by concatenating a Riemannian proximal gradient method and the Riemannian proximal Newton method. It is shown that if the switch parameter is chosen appropriately, then the hybrid method converges globally and also has a local superlinear convergence rate. Numerical experiments on random and synthetic data are used to demonstrate the performance of the proposed methods. KeywordsRiemannian optimizationmanifold optimizationproximal Newton methodembedded submanifoldsuperlinearMSC codes90-0890C2690C30
Si et al. (Fri,) studied this question.