4.6 Article

PROBABILISTIC ALGORITHM FOR POLYNOMIAL OPTIMIZATION OVER A REAL ALGEBRAIC SET

Journal

SIAM JOURNAL ON OPTIMIZATION
Volume 24, Issue 3, Pages 1313-1343

Publisher

SIAM PUBLICATIONS
DOI: 10.1137/130931308

Keywords

global optimization; polynomial optimization; polynomial system solving; real solutions

Funding

  1. French National Research Agency [ANR 2011 BS03 011 06]

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Let f, f(1),..., f(s) be n-variate polynomials with rational coefficients of maximum degree D and let V be the set of common complex solutions of F = (f(1),..., f(s)). We give an algorithm which, up to some regularity assumptions on F, computes an exact representation of the global infimum f* of the restriction of the map x -> f(x) to V boolean AND R-n, i.e., a univariate polynomial vanishing at f* and an isolating interval for f*. Furthermore, it decides whether f* is reached, and if so, it returns x* is an element of V boolean AND R-n such that f(x*) = f*. This algorithm is probabilistic. It makes use of the notion of polar varieties. Its complexity is essentially cubic in (sD)(n) and linear in the complexity of evaluating the input. This fits within the best known deterministic complexity class D-O(n). We report on some practical experiments of a first implementation that is available as a Maple package. It appears that it can tackle global optimization problems that were unreachable by previous exact algorithms and can manage instances that are hard to solve with purely numeric techniques. As far as we know, even under the extra genericity assumptions on the input, it is the first probabilistic algorithm that combines practical efficiency with good control of complexity for this problem.

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