Artículo de revista
Subdifferential characterization of probability functions under Gaussian distribution
Fecha
2019Registro en:
Mathematical Programming, Volumen 174, Issue 1-2, 2019, Pages 167-194
14364646
00255610
10.1007/s10107-018-1237-9
Autor
Hantoute, Abderrahim
Henrion, René
Pérez-Aros, Pedro
Institución
Resumen
© 2018, Springer-Verlag GmbH Germany, part of Springer Nature and Mathematical Optimization Society. Probability functions figure prominently in optimization problems of engineering. They may be nonsmooth even if all input data are smooth. This fact motivates the consideration of subdifferentials for such typically just continuous functions. The aim of this paper is to provide subdifferential formulae of such functions in the case of Gaussian distributions for possibly infinite-dimensional decision variables and nonsmooth (locally Lipschitzian) input data. These formulae are based on the spheric-radial decomposition of Gaussian random vectors on the one hand and on a cone of directions of moderate growth on the other. By successively adding additional hypotheses, conditions are satisfied under which the probability function is locally Lipschitzian or even differentiable.