EFFECTIVE SCENARIOS IN MULTISTAGE DISTRIBUTIONALLY ROBUST OPTIMIZATION WITH A FOCUS ON TOTAL VARIATION DISTANCE

Bayraksan, Guzin; De-Mello, Tito Homem

Abstract

We study multistage distributionally robust optimization (DRO) to hedge against ambiguity in quantifying the underlying uncertainty of a problem. Recognizing that not all the realizations and scenario paths might have an "effect" on the optimal value, we investigate the question of how to define and identify critical scenarios for nested multistage DRO problems. Our analysis extends the work of Rahimian, Bayraksan, and Homem-de-Mello [Math. Program., 173 (2019), pp. 393-430], which was in the context of a static/two-stage setting, to the multistage setting. To this end, we define the notions of effectiveness of scenario paths and the conditional effectiveness of realizations along a scenario path for a general class of multistage DRO problems. We then propose easy-to-check conditions to identify the effectiveness of scenario paths in the multistage setting when the distributional ambiguity is modeled via the total variation distance. Numerical results show that these notions provide useful insight on the underlying uncertainty of the problem.

Más información

Título según WOS: EFFECTIVE SCENARIOS IN MULTISTAGE DISTRIBUTIONALLY ROBUST OPTIMIZATION WITH A FOCUS ON TOTAL VARIATION DISTANCE
Título según SCOPUS: ID SCOPUS_ID:85135692126 Not found in local SCOPUS DB
Título de la Revista: SIAM JOURNAL ON OPTIMIZATION
Volumen: 32
Editorial: SIAM PUBLICATIONS
Fecha de publicación: 2022
Página de inicio: 1698
Página final: 1727
DOI:

10.1137/21M1446484

Notas: ISI, SCOPUS - WoS