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  • Search: isPartOf:"Computational Optimization and Applications"
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Year of publication
Subject
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Theorie 52 Theory 52 Mathematical programming 44 Mathematische Optimierung 44 Optimal control 37 Global convergence 30 Nonlinear programming 29 Global optimization 17 Semidefinite programming 16 Algorithm 14 Optimization 14 Quadratic programming 14 Unconstrained optimization 14 Algorithmus 13 Heuristics 13 Integer programming 12 Nonsmooth optimization 12 Stochastic programming 12 Error estimates 11 Branch-and-bound 10 Constrained optimization 10 Linear programming 10 Regularization 10 Convergence analysis 9 Dynamic programming 9 Nichtlineare Optimierung 9 State constraints 9 Augmented Lagrangian method 8 Combinatorial optimization 8 Semismooth Newton method 8 Superlinear convergence 8 Variational inequality 8 Convex optimization 7 Derivative-free optimization 7 Error bound 7 Multi-objective optimization 7 Robust optimization 7 Sequential quadratic programming 7 Augmented Lagrangian 6 Convergence 6
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Online availability
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Undetermined 563 Free 53
Type of publication
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Article 704 Book / Working Paper 3
Type of publication (narrower categories)
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Article in journal 90 Aufsatz in Zeitschrift 90 Article 53 Konferenzschrift 2 Collection of articles of several authors 1 Sammelwerk 1
Language
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Undetermined 562 English 145
Author
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Kanzow, Christian 10 Tröltzsch, Fredi 8 Chen, Jein-Shan 7 Wachsmuth, Daniel 7 Yuan, Xiaoming 7 Chen, Xiaojun 6 Izmailov, A. 6 Martínez, J. 6 Pan, Shaohua 6 Schiela, Anton 6 Wu, Soon-Yi 6 Zhang, Hongchao 6 Fukushima, Masao 5 He, Bingsheng 5 Locatelli, Marco 5 Qi, Liqun 5 Burer, Samuel 4 Casas, Eduardo 4 Grieshammer, Max 4 Hinze, Michael 4 Kunisch, Karl 4 Martí, Rafael 4 Neitzel, Ira 4 Pflug, Lukas 4 Pong, Ting 4 Rösch, Arnd 4 Sherali, Hanif 4 Solodov, M. 4 Stingl, Michael 4 Thi, Hoai Le 4 Toint, Philippe 4 Uihlein, Andrian 4 Xiu, Naihua 4 Yu, Bo 4 Achtziger, Wolfgang 3 Ali, M. 3 Anitescu, Mihai 3 Armand, Paul 3 Avella, Pasquale 3 Birgin, Ernesto 3
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Institution
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Conference on High Performance Algorithms and Software for Nonlinear Optimization <2004, Ischia> 1 MML <2004, Como> 1
Published in...
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Computational Optimization and Applications 615 Computational optimization and applications : an international journal 92
Source
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RePEc 562 ECONIS (ZBW) 90 EconStor 53 USB Cologne (EcoSocSci) 2
Showing 221 - 230 of 707
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A double smoothing technique for solving unconstrained nondifferentiable convex optimization problems
Boţ, Radu; Hendrich, Christopher - In: Computational Optimization and Applications 54 (2013) 2, pp. 239-262
The aim of this paper is to develop an efficient algorithm for solving a class of unconstrained nondifferentiable convex optimization problems in finite dimensional spaces. To this end we formulate first its Fenchel dual problem and regularize it in two steps into a differentiable strongly...
Persistent link: https://www.econbiz.de/10010998330
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A novel differential evolution algorithm for binary optimization
Kashan, Mina Husseinzadeh; Kashan, Ali Husseinzadeh; … - In: Computational Optimization and Applications 55 (2013) 2, pp. 481-513
Differential evolution (DE) is one of the most powerful stochastic search methods which was introduced originally for continuous optimization. In this sense, it is of low efficiency in dealing with discrete problems. In this paper we try to cover this deficiency through introducing a new version...
Persistent link: https://www.econbiz.de/10010998338
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A robust and efficient proposal for solving linear systems arising in interior-point methods for linear programming
Gonzalez-Lima, María; Oliveira, Aurelio; Oliveira, Danilo - In: Computational Optimization and Applications 56 (2013) 3, pp. 573-597
We introduce an efficient and robust proposal for solving linear systems arising at each iteration of primal-dual interior-point methods for linear programming. Our proposal is based on the stable system presented by Gonzalez-Lima et al. (Comput. Opt. Appl. 44:213–247, <CitationRef CitationID="CR14">2009</CitationRef>). Using similar...</citationref>
Persistent link: https://www.econbiz.de/10010998339
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A simplex-based numerical framework for simple and efficient robust design optimization
Congedo, Pietro; Witteveen, Jeroen; Iaccarino, Gianluca - In: Computational Optimization and Applications 56 (2013) 1, pp. 231-251
The Simplex Stochastic Collocation (SSC) method is an efficient algorithm for uncertainty quantification (UQ) in computational problems with random inputs. In this work, we show how its formulation based on simplex tessellation, high degree polynomial interpolation and adaptive refinements can...
Persistent link: https://www.econbiz.de/10010998344
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An acceleration scheme for cyclic subgradient projections method
Nikazad, Touraj; Abbasi, Mokhtar - In: Computational Optimization and Applications 54 (2013) 1, pp. 77-91
An algorithm for solving convex feasibility problem for a finite family of convex sets is considered. The acceleration scheme of De Pierro (em Methodos de projeção para a resolução de sistemas gerais de equações algébricas lineares. Thesis (tese de Doutoramento), Instituto de Matemática...
Persistent link: https://www.econbiz.de/10010998347
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Primal and dual alternating direction algorithms for ℓ <Subscript>1</Subscript>-ℓ <Subscript>1</Subscript>-norm minimization problems in compressive sensing
Xiao, Yunhai; Zhu, Hong; Wu, Soon-Yi - In: Computational Optimization and Applications 54 (2013) 2, pp. 441-459
In this paper, we propose, analyze and test primal and dual versions of the alternating direction algorithm for the sparse signal reconstruction from its major noise contained observation data. The algorithm minimizes a convex non-smooth function consisting of the sum of ℓ <Subscript>1</Subscript>-norm...</subscript>
Persistent link: https://www.econbiz.de/10010998348
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A homotopy method for nonlinear semidefinite programming
Yang, Li; Yu, Bo - In: Computational Optimization and Applications 56 (2013) 1, pp. 81-96
In this paper, for solving the nonlinear semidefinite programming problem, a homotopy is constructed by using the parameterized matrix inequality constraint. Existence of a smooth path determined by the homotopy equation, which starts from almost everywhere and converges to a...
Persistent link: https://www.econbiz.de/10010998352
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On an inexact gradient method using Proper Orthogonal Decomposition for parabolic optimal control problems
Jörres, Christian; Vossen, Georg; Herty, Michael - In: Computational Optimization and Applications 55 (2013) 2, pp. 459-468
This paper is devoted to a numerical solution technique for linear quadratic parabolic optimal control problems using the model order reduction technique of Proper Orthogonal Decomposition (POD). The proposed technique is an inexact gradient descent method where the step size is determined with...
Persistent link: https://www.econbiz.de/10010998353
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Newton-like methods for efficient solutions in vector optimization
Chuong, Thai - In: Computational Optimization and Applications 54 (2013) 3, pp. 495-516
In this work we study the Newton-like methods for finding efficient solutions of the vector optimization problem for a map from a finite dimensional Hilbert space X to a Banach space Y, with respect to the partial order induced by a closed, convex and pointed cone C with a nonempty interior. We...
Persistent link: https://www.econbiz.de/10010998354
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Preconditioning Newton–Krylov methods in nonconvex large scale optimization
Fasano, Giovanni; Roma, Massimo - In: Computational Optimization and Applications 56 (2013) 2, pp. 253-290
We consider an iterative preconditioning technique for non-convex large scale optimization. First, we refer to the solution of large scale indefinite linear systems by using a Krylov subspace method, and describe the iterative construction of a preconditioner which does not involve matrices...
Persistent link: https://www.econbiz.de/10010998360
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