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Superlinear Optimization Algorithms

Authors :
Wang, Hongxia
Xu, Yeming
Guo, Ziyuan
Zhang, Huanshui
Publication Year :
2024

Abstract

This paper proposes several novel optimization algorithms for minimizing a nonlinear objective function. The algorithms are enlightened by the optimal state trajectory of an optimal control problem closely related to the minimized objective function. They are superlinear convergent when appropriate parameters are selected as required. Unlike Newton's method, all of them can be also applied in the case of a singular Hessian matrix. More importantly, by reduction, some of them avoid calculating the inverse of the Hessian matrix or an identical dimension matrix and some of them need only the diagonal elements of the Hessian matrix. In these cases, these algorithms still outperform the gradient descent method. The merits of the proposed optimization algorithm are illustrated by numerical experiments.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2403.11115
Document Type :
Working Paper