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An algorithm for semi-infinite polynomial optimization (1101.4122v1)

Published 21 Jan 2011 in math.OC

Abstract: We consider the semi-infinite optimization problem: $f*:=\min_{x\in X}:{f(x): g(x,y)\,\leq \,0,:\forally\in Y_x}$, where $f,g$ are polynomials and $X\subset Rn$ as well as $Y_\x\subset Rp$, $x\in X$, are compact basic semi-algebraic sets. To approximate $f*$ we proceed in two steps. First, we use the "joint+marginal" approach of the author to approximate from above the function $x\mapsto\Phi(x)=\sup {g(x,y): y\in Y_x}$ by a polynomial $\Phi_d\geq\Phi$, of degree at most $2d$, with the strong property that $\Phi_d$ converges to $\Phi$ for the $L_1$-norm, as $d\to\infty$ (and in particular, almost uniformly for some subsequence $(d_\ell)$, $\ell\in\N$). Then we solve the polynomial optimization problem $f*d=\min{x\in X} {f(x): \Phi_d(x)\leq0}$ via a (by now standard) hierarchy of semidefinite relaxations. It turns out that the optimal value $f*_d\geq f*$ converges to $f*$ as $d\to\infty$. In practice we let $d$ be fixed, small, and relax the constraint $\Phi_d\leq0$ to $\Phi_d(x)\leq\epsilon$ with $\epsilon>0$, allowing to change $\epsilon$ dynamically.

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