The scenario optimization method developed by Calafiore and Campi (2006) is a theoretically sound and practically effective technique for solving in a probabilistic setting robust convex optimization problems arising in systems and control design, that would otherwise be hard to tackle via standard deterministic techniques. In this note, we further explore some aspects of the scenario methodology, and present two results pertaining to the tightness of the sample complexity bounds. We also state a new theorem that enables the user to make a-priori probabilistic claims on the scenario solution, with one level of probability only.
New results on the scenario design approach / M. C., Campi; Calafiore, Giuseppe Carlo. - STAMPA. - (2007), pp. 6184-6189. (Intervento presentato al convegno 46th Conference on Decision and Control tenutosi a New Orleans, LA nel 12-14 Dec. 2007) [10.1109/CDC.2007.4434039].
New results on the scenario design approach
CALAFIORE, Giuseppe Carlo
2007
Abstract
The scenario optimization method developed by Calafiore and Campi (2006) is a theoretically sound and practically effective technique for solving in a probabilistic setting robust convex optimization problems arising in systems and control design, that would otherwise be hard to tackle via standard deterministic techniques. In this note, we further explore some aspects of the scenario methodology, and present two results pertaining to the tightness of the sample complexity bounds. We also state a new theorem that enables the user to make a-priori probabilistic claims on the scenario solution, with one level of probability only.Pubblicazioni consigliate
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https://hdl.handle.net/11583/1643062
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