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Reduced RLT representations for nonconvex polynomial programming problems

机译:非凸多项式规划问题的简化RLT表示

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This paper explores equivalent, reduced size Reformulation-Linearization Technique (RLT)-based formulations for polynomial programming problems. Utilizing a basis partitioning scheme for an embedded linear equality subsystem, we show that a strict subset of RLT defining equalities imply the remaining ones. Applying this result, we derive significantly reduced RLT representations and develop certain coherent associated branching rules that assure convergence to a global optimum, along with static as well as dynamic basis selection strategies to implement the proposed procedure. In addition, we enhance the RLT relaxations with v-semidefinite cuts, which are empirically shown to further improve the relative performance of the reduced RLT method over the usual RLT approach. We present computational results for randomly generated instances to test the different proposed reduction strategies and to demonstrate the improvement in overall computational effort when such reduced RLT mechanisms are employed.
机译:本文探讨了多项式编程问题的等效的,尺寸减小的,基于重构线性化技术(RLT)的公式。利用嵌入式线性相等子系统的基础划分方案,我们表明RLT定义相等的严格子集意味着剩余的相等。应用此结果,我们得出了显着减少的RLT表示形式,并开发了某些连贯的关联分支规则,以确保收敛到全局最优值,以及采用静态和动态基础选择策略来实施所提出的过程。此外,我们通过v-半限定切口增强了RLT松弛,根据经验显示,与常规RLT方法相比,该方法可进一步提高简化RLT方法的相对性能。我们提出了随机生成实例的计算结果,以测试不同的拟议减少策略,并证明采用这种减少的RLT机制时总体计算工作量的提高。

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