arXiv Analytics

Sign in

arXiv:2203.03351 [math.OC]AbstractReferencesReviewsResources

OFFO minimization algorithms for second-order optimality and their complexity

S. Gratton, Ph. L. Toint

Published 2022-03-07Version 1

An Adagrad-inspired class of algorithms for smooth unconstrained optimization is presented in which the objective function is never evaluated and yet the gradient norms decrease at least as fast as $\calO(1/\sqrt{k+1})$ while second-order optimality measures converge to zero at least as fast as $\calO(1/(k+1)^{1/3})$. This latter rate of convergence is shown to be essentially sharp and is identical to that known for more standard algorithms (like trust-region or adaptive-regularization methods) using both function and derivatives' evaluations. A related "divergent stepsize" method is also described, whose essentially sharp rate of convergence is slighly inferior. It is finally discussed how to obtain weaker second-order optimality guarantees at a (much) reduced computional cost.

Related articles: Most relevant | Search more
arXiv:1803.07683 [math.OC] (Published 2018-03-20)
On the Complexity of Testing Attainment of the Optimal Value in Nonlinear Optimization
arXiv:1907.02401 [math.OC] (Published 2019-07-04)
Complexity and performance of an Augmented Lagrangian algorithm
arXiv:2103.15989 [math.OC] (Published 2021-03-29)
Complexity of Projected Newton Methods for Bound-constrained Optimization