A hybrid direct search and projected simplex gradient method for convex constrained minimization
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作者:
Custodio, A. L.
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NOVA FCT, Ctr Math & Applicat NOVA Math, Caparica, Portugal
NOVA FCT, Dept Math, Caparica, Portugal
Ctr Math & Applicat NOVA Math, NOVA FCT, P-2829516 Caparica, Portugal
NOVA FCT, Dept Math, P-2829516 Caparica, PortugalNOVA FCT, Ctr Math & Applicat NOVA Math, Caparica, Portugal
Custodio, A. L.
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Krulikovski, E. H. M.
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机构:
NOVA FCT, Ctr Math & Applicat NOVA Math, Caparica, PortugalNOVA FCT, Ctr Math & Applicat NOVA Math, Caparica, Portugal
Krulikovski, E. H. M.
[1
]
Raydan, M.
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NOVA FCT, Ctr Math & Applicat NOVA Math, Caparica, PortugalNOVA FCT, Ctr Math & Applicat NOVA Math, Caparica, Portugal
Raydan, M.
[1
]
机构:
[1] NOVA FCT, Ctr Math & Applicat NOVA Math, Caparica, Portugal
[2] NOVA FCT, Dept Math, Caparica, Portugal
[3] Ctr Math & Applicat NOVA Math, NOVA FCT, P-2829516 Caparica, Portugal
[4] NOVA FCT, Dept Math, P-2829516 Caparica, Portugal
We propose a new Derivative-free Optimization (DFO) approach for solving convex constrained minimization problems. The feasible set is assumed to be the non-empty intersection of a finite collection of closed convex sets, such that the projection onto each of these individual convex sets is simple and inexpensive to compute. Our iterative approach alternates between steps that use Directional Direct Search (DDS), considering adequate poll directions, and a Spectral Projected Gradient (SPG) method, replacing the real gradient by a simplex gradient, under a DFO approach. In the SPG steps, if the convex feasible set is simple, then a direct projection is computed. If the feasible set is the intersection of finitely many convex simple sets, then Dykstra's alternating projection method is applied. Convergence properties are established under standard assumptions usually associated to DFO methods. Some preliminary numerical experiments are reported to illustrate the performance of the proposed algorithm, in particular by comparing it with a classical DDS method. Our results indicate that the hybrid algorithm is a robust and effective approach for derivative-free convex constrained optimization.