Full convergence of the proximal point method for quasiconvex functions on Hadamard manifolds

Erik A. Papa Quiroz; P. Roberto Oliveira

ESAIM: Control, Optimisation and Calculus of Variations (2012)

  • Volume: 18, Issue: 2, page 483-500
  • ISSN: 1292-8119

Abstract

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In this paper we propose an extension of the proximal point method to solve minimization problems with quasiconvex objective functions on Hadamard manifolds. To reach this goal, we initially extend the concepts of regular and generalized subgradient from Euclidean spaces to Hadamard manifolds and prove that, in the convex case, these concepts coincide with the classical one. For the minimization problem, assuming that the function is bounded from below, in the quasiconvex and lower semicontinuous case, we prove the convergence of the iterations given by the method. Furthermore, under the assumptions that the sequence of proximal parameters is bounded and the function is continuous, we obtain the convergence to a generalized critical point. In particular, our work extends the applications of the proximal point methods for solving constrained minimization problems with nonconvex objective functions in Euclidean spaces when the objective function is convex or quasiconvex on the manifold.

How to cite

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Papa Quiroz, Erik A., and Oliveira, P. Roberto. "Full convergence of the proximal point method for quasiconvex functions on Hadamard manifolds." ESAIM: Control, Optimisation and Calculus of Variations 18.2 (2012): 483-500. <http://eudml.org/doc/277815>.

@article{PapaQuiroz2012,
abstract = {In this paper we propose an extension of the proximal point method to solve minimization problems with quasiconvex objective functions on Hadamard manifolds. To reach this goal, we initially extend the concepts of regular and generalized subgradient from Euclidean spaces to Hadamard manifolds and prove that, in the convex case, these concepts coincide with the classical one. For the minimization problem, assuming that the function is bounded from below, in the quasiconvex and lower semicontinuous case, we prove the convergence of the iterations given by the method. Furthermore, under the assumptions that the sequence of proximal parameters is bounded and the function is continuous, we obtain the convergence to a generalized critical point. In particular, our work extends the applications of the proximal point methods for solving constrained minimization problems with nonconvex objective functions in Euclidean spaces when the objective function is convex or quasiconvex on the manifold. },
author = {Papa Quiroz, Erik A., Oliveira, P. Roberto},
journal = {ESAIM: Control, Optimisation and Calculus of Variations},
keywords = {Proximal point method; quasiconvex function; Hadamard manifolds; full convergence.; proximal point method; full convergence},
language = {eng},
month = {7},
number = {2},
pages = {483-500},
publisher = {EDP Sciences},
title = {Full convergence of the proximal point method for quasiconvex functions on Hadamard manifolds},
url = {http://eudml.org/doc/277815},
volume = {18},
year = {2012},
}

TY - JOUR
AU - Papa Quiroz, Erik A.
AU - Oliveira, P. Roberto
TI - Full convergence of the proximal point method for quasiconvex functions on Hadamard manifolds
JO - ESAIM: Control, Optimisation and Calculus of Variations
DA - 2012/7//
PB - EDP Sciences
VL - 18
IS - 2
SP - 483
EP - 500
AB - In this paper we propose an extension of the proximal point method to solve minimization problems with quasiconvex objective functions on Hadamard manifolds. To reach this goal, we initially extend the concepts of regular and generalized subgradient from Euclidean spaces to Hadamard manifolds and prove that, in the convex case, these concepts coincide with the classical one. For the minimization problem, assuming that the function is bounded from below, in the quasiconvex and lower semicontinuous case, we prove the convergence of the iterations given by the method. Furthermore, under the assumptions that the sequence of proximal parameters is bounded and the function is continuous, we obtain the convergence to a generalized critical point. In particular, our work extends the applications of the proximal point methods for solving constrained minimization problems with nonconvex objective functions in Euclidean spaces when the objective function is convex or quasiconvex on the manifold.
LA - eng
KW - Proximal point method; quasiconvex function; Hadamard manifolds; full convergence.; proximal point method; full convergence
UR - http://eudml.org/doc/277815
ER -

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