© 2019, Springer Science+Business Media, LLC, part of Springer Nature. We suggest a conjugate subgradient type method without any line search for minimization of convex non-differentiable functions. Unlike the custom methods of this class, it does not require monotone decrease in the goal function and reduces the implementation cost of each iteration essentially. At the same time, its step-size procedure takes into account behavior of the method along the iteration points. The preliminary results of computational experiments confirm the efficiency of the proposed modification
We generalize the subgradient optimization method for nondifferentiable convex programming to utiliz...
We describe an algorithm for minimizing convex, not necessarily smooth, functions of several variabl...
xvi, 152 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P AMA 2013 HuThe purpose of this ...
© 2019, Springer Science+Business Media, LLC, part of Springer Nature. We suggest a conjugate subgra...
International audienceIn this paper we present a subgradient method with non-monotone line search fo...
A class of convexification and concavification methods are proposed for solving some classes of non-...
In this paper, we develop new subgradient methods for solving nonsmooth convex optimization problems...
Abstract—A method to solve the convex problems of nondifferentiable optimization relying on the basi...
International audienceThis paper describes a new efficient conjugate subgradient algorithm which min...
We propose in this paper an algorithm for solving linearly constrained nondierentiable convex progra...
We propose in this paper an algorithm for solving linearly constrained nondifferentiable convex prog...
The goal of this work is describe the State of the Art about Subgradients Methods for optimization ...
A method, called an augmented subgradient method, is developed to solve unconstrained nonsmooth diff...
This paper presents an analysis of the convergence properties of the Method of Conjugate Gradients. ...
AbstractUsing only easily computable portions of certain ε-subdifferentials an implementable converg...
We generalize the subgradient optimization method for nondifferentiable convex programming to utiliz...
We describe an algorithm for minimizing convex, not necessarily smooth, functions of several variabl...
xvi, 152 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P AMA 2013 HuThe purpose of this ...
© 2019, Springer Science+Business Media, LLC, part of Springer Nature. We suggest a conjugate subgra...
International audienceIn this paper we present a subgradient method with non-monotone line search fo...
A class of convexification and concavification methods are proposed for solving some classes of non-...
In this paper, we develop new subgradient methods for solving nonsmooth convex optimization problems...
Abstract—A method to solve the convex problems of nondifferentiable optimization relying on the basi...
International audienceThis paper describes a new efficient conjugate subgradient algorithm which min...
We propose in this paper an algorithm for solving linearly constrained nondierentiable convex progra...
We propose in this paper an algorithm for solving linearly constrained nondifferentiable convex prog...
The goal of this work is describe the State of the Art about Subgradients Methods for optimization ...
A method, called an augmented subgradient method, is developed to solve unconstrained nonsmooth diff...
This paper presents an analysis of the convergence properties of the Method of Conjugate Gradients. ...
AbstractUsing only easily computable portions of certain ε-subdifferentials an implementable converg...
We generalize the subgradient optimization method for nondifferentiable convex programming to utiliz...
We describe an algorithm for minimizing convex, not necessarily smooth, functions of several variabl...
xvi, 152 p. : ill. ; 30 cm.PolyU Library Call No.: [THS] LG51 .H577P AMA 2013 HuThe purpose of this ...