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Monomial-wise optimal separable underestimators for mixed-integer polynomial optimization

机译:混合整数多项式优化的单项式最优可分离低估计

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We introduce a new method for solving box-constrained mixed-integer polynomial problems to global optimality. The approach, a specialized branch-and-bound algorithm, is based on the computation of lower bounds provided by the minimization of separable underestimators of the polynomial objective function. The underestimators are the novelty of the approach because the standard approaches in global optimization are based on convex relaxations. Thanks to the fact that only simple bound constraints are present, minimizing the separable underestimator can be done very quickly. The underestimators are computed monomial-wise after the original polynomial has been shifted. We show that such valid underestimators exist and their degree can be bounded when the degree of the polynomial objective function is bounded, too. For the quartic case, all optimal monomial underestimators are determined analytically. We implemented and tested the branch-and-bound algorithm where these underestimators are hardcoded. The comparison against standard global optimization and polynomial optimization solvers clearly shows that our method outperforms the others, the only exception being the binary case where, though, it is still competitive. Moreover, our branch-and-bound approach suffers less in case of dense polynomial objective function, i.e., in case of polynomials having a large number of monomials. This paper is an extended and revised version of the preliminary paper [4].
机译:我们引入了一种新的方法来解决盒约束混合整数多项式问题的全局最优性。该方法是一种专门的分支定界算法,它基于对多项式目标函数的可分离低估量的最小化所提供的下限计算。被低估的是该方法的新颖性,因为全局优化中的标准方法基于凸松弛。由于仅存在简单的边界约束,因此可以非常快地使可分离的低估量最小化。在原始多项式移位后,低估器将按多项式进行计算。我们证明了,当多项式目标函数的阶次有界时,存在这样的有效低估量,并且它们的阶次也可以有界。对于四次情况,通过分析确定所有最优单项式低估量。我们实施和测试了分支和边界算法,在这些算法中,这些低估量被硬编码。与标准全局优化和多项式优化求解器的比较清楚地表明,我们的方法优于其他方法,唯一的例外是二进制情​​况,尽管它仍然具有竞争力。而且,在密集多项式目标函数的情况下,即在多项式具有大量单项式的情况下,我们的分支定界方法所受的影响较小。本文是初稿的扩展和修订版[4]。

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