In this paper, we describe a two-stage method for solving optimization
problems with bound constraints. It combines the active-set estimate described in
Facchinei and Lucidi (J Optim Theory Appl 85(2):265–289, 1995)with amodification
of the non-monotone line search framework recently proposed in De Santis et al.
(Comput Optim Appl 53(2):395–423, 2012). In the first stage, the algorithm exploits a
property of the active-set estimate that ensures a significant reduction in the objective
function when setting to the bounds all those variables estimated active. In the second
stage, a truncated-Newton strategy is used in the subspace of the variables estimated
non-active. In order to properly combine the two phases, a proximity check is included
in the scheme. This new tool, together with the other theoretical features of the two
stages, enables us to prove global convergence. Furthermore, under additional standard
assumptions, we can showthat the algorithm converges at a superlinear rate. Promising
experimental results demonstrate the effectiveness of the proposed method.
Dettaglio pubblicazione
2017, JOURNAL OF OPTIMIZATION THEORY AND APPLICATIONS, Pages 369-401 (volume: 172)
A Two-Stage Active-Set Algorithm for Bound-Constrained Optimization (01a Articolo in rivista)
Cristofari Andrea, DE SANTIS Marianna, Lucidi Stefano, Rinaldi Francesco
Gruppo di ricerca: Continuous Optimization
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