Andrew R. Conn, Luís N. Vicente, et al.
SIAM Journal on Optimization
In this paper we prove global convergence for first- and second-order stationary points of a class of derivative-free trust-region methods for unconstrained optimization. These methods are based on the sequential minimization of quadratic (or linear) models built from evaluating the objective function at sample sets. The derivative-free models are required to satisfy Taylor-type bounds, but, apart from that, the analysis is independent of the sampling techniques. A number of new issues are addressed, including global convergence when acceptance of iterates is based on simple decrease of the objective function, trust-region radius maintenance at the criticality step, and global convergence for second-order critical points. © 2009 Society for Industrial and Applied Mathematics.
Andrew R. Conn, Luís N. Vicente, et al.
SIAM Journal on Optimization
Trang H. Tran, Lam Nguyen, et al.
INFORMS 2023
Oktay Günlük, Jayant R. Kalagnanam, et al.
Journal of Global Optimization
Andrew R. Conn, Luís N. Vicente, et al.
SIAM Journal on Optimization