Title of article
A New Modified Trust Region Algorithm for Solving Unconstrained Optimization Problems
Author/Authors
Dehghan Niri, T. Yazd University , Hosseini, M. M. Yazd University , Heydari, M. Yazd University
Pages
21
From page
115
To page
135
Abstract
Iterative methods for optimization can be classified into
two categories: line search methods and trust region methods. In this
paper, we propose a modified regularized Newton method for minimizing
nonconvex functions whose Hessian matrix may be singular without
line search. The proposed method is proved to converge globally if the
Gradient and Hessian of the objective function are Lipschitz continuous.
Moreover, we report numerical results that show that the proposed
algorithm is competitive with the existing methods
Keywords
Regularized Newton method , unconstrained optimization , nonconvex , trust-region method , convergence analysis
Journal title
Astroparticle Physics
Serial Year
2018
Record number
2443074
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