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Linearization of McCormick relaxations and hybridization with the auxiliary variable method

机译:用辅助可变方法的麦考克利弛豫和杂交的线性化

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The computation of lower bounds via the solution of convex lower bounding problems depicts current state-of-the-art in deterministic global optimization. Typically, the nonlinear convex relaxations are further underestimated through linearizations of the convex underestimators at one or several points resulting in a lower bounding linear optimization problem. The selection of linearization points substantially affects the tightness of the lower bounding linear problem. Established methods for the computation of such linearization points, e.g., the sandwich algorithm, are already available for the auxiliary variable method used in state-of-the-art deterministic global optimization solvers. In contrast, no such methods have been proposed for the (multivariate) McCormick relaxations. The difficulty of determining a good set of linearization points for the McCormick technique lies in the fact that no auxiliary variables are introduced and thus, the linearization points have to be determined in the space of original optimization variables. We propose algorithms for the computation of linearization points for convex relaxations constructed via the (multivariate) McCormick theorems. We discuss alternative approaches based on an adaptation of Kelley's algorithm; computation of all vertices of an n-simplex; a combination of the two; and random selection. All algorithms provide substantial speed ups when compared to the single point strategy used in our previous works. Moreover, we provide first results on the hybridization of the auxiliary variable method with the McCormick technique benefiting from the presented linearization strategies resulting in additional computational advantages.
机译:通过凸下限定问题的解决方案计算下限描述了确定性全局优化的当前最先进的。通常,非线性凸起松弛进一步低估通过在一个或多个点处的凸低低估器的线性化,导致较低的边界线性优化问题。线性化点的选择基本上影响了下限线性问题的紧密性。建立用于计算这种线性化点的方法,例如,Sandwich算法,已经可用于最先进的确定性全球优化求解器中使用的辅助变量方法。相比之下,没有提出(多变量)麦考米氏菌弛豫的这些方法。确定用于麦克文克测技术的良好线性化点的难度在于,没有引入辅助变量,因此必须在原始优化变量的空间中确定线性化点。我们提出了通过(多变量)McCormick定理构建的凸弛豫线性化点的计算算法。我们讨论基于Kelley算法的适应性的替代方法;计算n-simplex的所有顶点;两者的组合;随机选择。与我们以前的作品中使用的单点策略相比,所有算法都提供了大量的速度UPS。此外,我们提供首先对辅助变量方法的杂交,利用所呈现的线性化策略的麦克匹氏型技术导致额外的计算优势。

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