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A method for convex black-box integer global optimization

机译:一种凸黑盒整数全局优化的方法

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摘要

We study the problem of minimizing a convex function on a nonempty, finite subset of the integer lattice when the function cannot be evaluated at noninteger points. We propose a new underestimator that does not require access to (sub)gradients of the objective; such information is unavailable when the objective is a blackbox function. Rather, our underestimator uses secant linear functions that interpolate the objective function at previously evaluated points. These linear mappings are shown to underestimate the objective in disconnected portions of the domain. Therefore, the union of these conditional cuts provides a nonconvex underestimator of the objective. We propose an algorithm that alternates between updating the underestimator and evaluating the objective function. We prove that the algorithm converges to a global minimum of the objective function on the feasible set. We present two approaches for representing the underestimator and compare their computational effectiveness. We also compare implementations of our algorithm with existing methods for minimizing functions on a subset of the integer lattice. We discuss the difficulty of this problem class and provide insights into why a computational proof of optimality is challenging even for moderate problem sizes.
机译:我们研究在非INTINTEGER点中无法在函数时最小化整数格子的非空的有限子集上的凸起功能的问题。我们提出了一种新的低估者,不需要访问目标的(子)梯度;当目标是黑箱功能时,此类信息不可用。相反,我们的低估者使用剪切线性函数,该函数在先前评估的点处插入目标函数。这些线性映射被示出为低估域的断开部分中的目标。因此,这些条件切割的结合提供了目标的非凸起低估的器。我们提出了一种算法,可以在更新低估器之间交替,并评估目标函数。我们证明该算法会聚到可行集上的目标函数的全局最小值。我们提出了两种代表低估者并比较其计算效率的方法。我们还将算法的实现与现有方法进行了现有方法,以最大限度地减少整数晶格子集上的函数。我们讨论了这个问题课的难度,并对为什么对于中等问题的尺寸来说,为什么计算最优性的证明是挑战的洞察。

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