In the present paper, several types of efficiency conditions are established for vector optimization problems with cone constraints affected by uncertainty, but with no information of stochastic nature about the uncertain data. Following a robust optimization approach, data uncertainty is faced by handling set-valued inclusion problems. The employment of recent advances about error bounds and tangential approximations of the solution set to the latter enables one to achieve necessary conditions for weak efficiency via a penalization method as well as via the modern revisitation of the Euler–Lagrange method, with or without generalized convexity assumptions. The presented conditions are formulated in terms of various nonsmooth analysis constructions, expressing first-order approximations of mappings and sets, while the metric increase property plays the role of a constraint qualification.

Uderzo, A. (2022). On some efficiency conditions for vector optimization problems with uncertain cone constraints: a robust approach via set-valued inclusions. OPTIMIZATION, 71(4), 907-936 [10.1080/02331934.2021.1934681].

On some efficiency conditions for vector optimization problems with uncertain cone constraints: a robust approach via set-valued inclusions

Uderzo, A
2022

Abstract

In the present paper, several types of efficiency conditions are established for vector optimization problems with cone constraints affected by uncertainty, but with no information of stochastic nature about the uncertain data. Following a robust optimization approach, data uncertainty is faced by handling set-valued inclusion problems. The employment of recent advances about error bounds and tangential approximations of the solution set to the latter enables one to achieve necessary conditions for weak efficiency via a penalization method as well as via the modern revisitation of the Euler–Lagrange method, with or without generalized convexity assumptions. The presented conditions are formulated in terms of various nonsmooth analysis constructions, expressing first-order approximations of mappings and sets, while the metric increase property plays the role of a constraint qualification.
Articolo in rivista - Articolo scientifico
data uncertainty; generalized derivative; robust approach; Vector optimization problem; weak efficiency condition;
English
1-giu-2021
2022
71
4
907
936
partially_open
Uderzo, A. (2022). On some efficiency conditions for vector optimization problems with uncertain cone constraints: a robust approach via set-valued inclusions. OPTIMIZATION, 71(4), 907-936 [10.1080/02331934.2021.1934681].
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/10281/393412
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