Argentina
| info:eu-repo/semantics/article
Approximating optimization problems over convex functions
Fecha
2008-11Registro en:
Aguilera, Néstor Edgardo; Morin, Pedro; Approximating optimization problems over convex functions; Springer; Numerische Mathematik; 111; 1; 11-2008; 1-34
0029-599X
0945-3245
CONICET Digital
CONICET
Autor
Aguilera, Néstor Edgardo
Morin, Pedro
Resumen
Many problems of theoretical and practical interest involve finding an optimum over a family of convex functions. For instance, finding the projection on the convex functions in $H^k(Omega)$, and some problems in economics. In the continuous setting and assuming smoothness, the convexity constraints may be given locally by asking the Hessian matrix to be positive semidefinite, but in making discrete approximations two difficulties arise: the continuous solutions may be not smooth, and functions with positive semidefinite discrete Hessian need not be convex in a discrete sense. Previous work has concentrated on non-local descriptions of convexity, making the number of constraints to grow super-linearly with the number of nodes even in dimension 2, and these descriptions are very difficult to extend to higher dimensions. In this paper we propose a finite difference approximation using positive semidefinite programs and discrete Hessians, and prove convergence under very general conditions, even when the continuous solution is not smooth, working on any dimension, and requiring a linear number of constraints in the number of nodes. Using positive semidefinite programming codes, we show concrete examples of approximations to problems in two and three dimensions.