Affiliation:
1. School of Mathematics, Jiangsu Center for Applied Mathematics China University of Mining and Technology Xuzhou China
2. Center for Applied Mathematics of Guangxi Yulin Normal University Yulin China
3. School of Computational Science and Electronics Hunan Institute of Engineering Xiangtan China
4. LSA mathematics University of Michigan at Ann Arbor Ann Arbor Michigan USA
Abstract
In this work, for unconstrained optimization, we introduce an improved Dai‐Liao‐style hybrid conjugate gradient method based on the hybridization‐based self‐adaptive technique, and the search direction generated fulfills the sufficient descent and trust region properties regardless of any line search. The global convergence is established under standard Wolfe line search and common assumptions. Then, combining the hyperplane projection technique and a new self‐adaptive line search, we extend the proposed conjugate gradient method and obtain an improved Dai‐Liao‐style hybrid conjugate gradient projection method to solve constrained nonlinear monotone equations. Under mild conditions, we obtain its global convergence without Lipschitz continuity. In addition, the convergence rates for the two proposed methods are analyzed, respectively. Finally, numerical experiments are conducted to demonstrate the effectiveness of the proposed methods.
Funder
National Natural Science Foundation of China
Natural Science Foundation of Guangxi Province