A trust-region-based BFGS method with line search technique for symmetric nonlinear equations.
Yuan, Gonglin, Meng, Shide, Wei, Zengxin (2009)
Advances in Operations Research
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Yuan, Gonglin, Meng, Shide, Wei, Zengxin (2009)
Advances in Operations Research
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Ladislav Lukšan, Ctirad Matonoha, Jan Vlček (2009)
Kybernetika
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In this paper, we propose a primal interior-point method for large sparse minimax optimization. After a short introduction, the complete algorithm is introduced and important implementation details are given. We prove that this algorithm is globally convergent under standard mild assumptions. Thus the large sparse nonconvex minimax optimization problems can be solved successfully. The results of extensive computational experiments given in this paper confirm efficiency and robustness...
El Mouatasim, Abdelkrim (2010)
Journal of Applied Mathematics
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Ladislav Lukšan, Ctirad Matonoha, Jan Vlček (2010)
Kybernetika
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In this paper, we propose a primal interior-point method for large sparse generalized minimax optimization. After a short introduction, where the problem is stated, we introduce the basic equations of the Newton method applied to the KKT conditions and propose a primal interior-point method. (i. e. interior point method that uses explicitly computed approximations of Lagrange multipliers instead of their updates). Next we describe the basic algorithm and give more details concerning...
Ana Friedlander, José Mario Martínez (1989)
RAIRO - Operations Research - Recherche Opérationnelle
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Abdelkrim El Mouatasim, Rachid Ellaia, José Souza de Cursi (2006)
International Journal of Applied Mathematics and Computer Science
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We consider the global optimization of a nonsmooth (nondifferentiable) nonconvex real function. We introduce a variable metric descent method adapted to nonsmooth situations, which is modified by the incorporation of suitable random perturbations. Convergence to a global minimum is established and a simple method for the generation of suitable perturbations is introduced. An algorithm is proposed and numerical results are presented, showing that the method is computationally effective...
Nada I. Djuranović-Miličić (2002)
The Yugoslav Journal of Operations Research
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Paulo J.S. Silva, Carlos Humes (2007)
RAIRO - Operations Research
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We present an inexact interior point proximal method to solve linearly constrained convex problems. In fact, we derive a primal-dual algorithm to solve the KKT conditions of the optimization problem using a modified version of the rescaled proximal method. We also present a pure primal method. The proposed proximal method has as distinctive feature the possibility of allowing inexact inner steps even for Linear Programming. This is achieved by using an error criterion that ...