Data di Pubblicazione:
2024
Abstract:
Given a strictly convex multiobjective optimization problem with objective functions $f_1,\dots,f_N$, let us denote by $x_0$ its solution, obtained as minimum point of the linear scalarized problem, where the objective function is the convex combination of $f_1,\dots,f_N$ with weights $t_1,\ldots,t_N$. The main result of this paper gives an estimation of the averaged error that we make if we approximate $x_0$ with the minimum point of the convex combinations of $n$ functions, chosen among $f_1,\dots,f_N$, with probabilities $t_1,\ldots,t_N$, respectively, and weighted with the same coefficient $1/n$. In particular, we prove that the averaged error considered above converges to 0 as $n$ goes to $\infty$, uniformly w.r.t. the weights $t_1,\ldots,t_N$. The key tool in the proof of our stochastic approximation theorem is a geometrical property, called by us small diameter property, ensuring that the minimum point of a convex combination of the functions $f_1,\dots,f_N$ continuously depends on the coefficients of the convex combination.
Tipologia CRIS:
1.1 Articolo in rivista
Keywords:
Multiobjective optimization, continuity of solution map, convex combinations of convex functions, small diameter property
Elenco autori:
Alberto De Bernardi, Carlo; Miglierina, Enrico; Molho, Elena; Somaglia, Jacopo
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