Generalized gradients for probabilistic/robust (probust) constraints

van Ackooij W.; Henrion R.; Pérez-Aros P.

Keywords: 90C15; Stochastic optimization; chance constraints; gradients of probability functions; probabilistic constraints; probust constraints

Abstract

Probability functions are a powerful modelling tool when seeking to account for uncertainty in optimization problems. In practice, such uncertainty may result from different sources for which unequal information is available. A convenient combination with ideas from robust optimization then leads to probust functions, i.e. probability functions acting on generalized semi-infinite inequality systems. In this paper we employ the powerful variational tools developed by Boris Mordukhovich to study generalized differentiation of such probust functions. We also provide explicit outer estimates of the generalized subdifferentials in terms of nominal data.

Más información

Título según SCOPUS: Generalized gradients for probabilistic/robust (probust) constraints
Título de la Revista: Optimization
Volumen: 69
Número: 7-8
Editorial: Taylor and Francis Ltd.
Fecha de publicación: 2020
Página final: 1479
Idioma: English
DOI:

10.1080/02331934.2019.1576670

Notas: SCOPUS