نتایج جستجو برای: Unconstrained optimization

تعداد نتایج: 324314  

Journal: :bulletin of the iranian mathematical society 0
m. ahookhosh faculty of mathematics‎, ‎university of vienna‎, ‎oskar-morge-nstern-platz 1‎, ‎1090 vienna‎, ‎austria. k. amini department of‎ ‎mathematics‎, ‎razi university‎, ‎kermanshah‎, ‎iran. m. kimiaei department of‎ ‎mathematics‎, ‎asadabad branch‎, ‎islamic azad university‎, ‎asadabad‎, ‎iran. m. r. ‎peyghami k.n. toosi university of department of‎ ‎mathematics‎, ‎k‎. ‎n‎. ‎toosi university of technology‎, ‎p.o‎. ‎box 16315-1618‎, ‎tehran‎, ‎iran.

this study concerns with a trust-region-based method for solving unconstrained optimization problems. the approach takes the advantages of the compact limited memory bfgs updating formula together with an appropriate adaptive radius strategy. in our approach, the adaptive technique leads us to decrease the number of subproblems solving, while utilizing the structure of limited memory quasi-newt...

Journal: :bulletin of the iranian mathematical society 2014
saman babaie-kafaki

‎based on an eigenvalue analysis‎, ‎a new proof for the sufficient‎ ‎descent property of the modified polak-ribière-polyak conjugate‎ ‎gradient method proposed by yu et al‎. ‎is presented‎.

In this paper‎, ‎two extended three-term conjugate gradient methods based on the Liu-Storey ({tt LS})‎ ‎conjugate gradient method are presented to solve unconstrained optimization problems‎. ‎A remarkable property of the proposed methods is that the search direction always satisfies‎ ‎the sufficient descent condition independent of line search method‎, ‎based on eigenvalue analysis‎. ‎The globa...

Amini, K., Kamandi, A.,

Trust region methods are a class of important and efficient methods for solving unconstrained optimization problems. The efficiency of these methods strongly depends on the initial parameter, especially radius adjusting parameters. In this paper, we propose a new strategy for choosing the radius adjusting parameters. Numerical results from testing the new idea to solve a class of unconstrained ...

Farhad Sarani, Hadi Nosratipour

In [1] (Hybrid Conjugate Gradient Algorithm for Unconstrained Optimization J. Optimization. Theory Appl. 141 (2009) 249 - 264), an efficient hybrid conjugate gradient algorithm, the CCOMB algorithm is proposed for solving unconstrained optimization problems. However, the proof of Theorem 2.1 in [1] is incorrect due to an erroneous inequality which used to indicate the descent property for the s...

Journal: :ACM Transactions on Mathematical Software 1981

Journal: :Comp. Opt. and Appl. 2016
Gili Rosenberg Mohammad Vazifeh Brad Woods Eldad Haber

A quantum annealer heuristically minimizes quadratic unconstrained binary optimization (QUBO) problems, but is limited by the physical hardware in the size and density of the problems it can handle. We have developed a meta-heuristic solver that utilizes D-Wave Systems’ quantum annealer (or any other QUBO problem optimizer) to solve larger or denser problems, by iteratively solving subproblems,...

Journal: :IOSR Journal of Computer Engineering 2013

Journal: :Mathematical Programming Computation 2022

Abstract For the unconstrained optimization of black box functions, this paper introduces a new randomized algorithm called . In practice, matches quality other state-of-the-art algorithms for finding, in small and large dimensions, local minimizer with reasonable accuracy. Although our theory guarantees only minimizers heuristic techniques turn into an efficient global solver. very thorough nu...

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