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Tighter αBB relaxations through a refinement scheme for the scaled Gerschgorin theorem

机译:通过按比例缩放Gerschgorin定理的细化方案,更紧的αBB松弛

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摘要

Of central importance to the BB algorithm is the calculation of the values that guarantee the convexity of the underestimator. Improvement (reduction) of these values can result in tighter underestimators and thus increase the performance of the algorithm. For instance, it was shown by Wechsung et al. (J Glob Optim 58(3):429-438, 2014) that the emergence of the cluster effect can depend on the magnitude of the values. Motivated by this, we present a refinement method that can improve (reduce) the magnitude of values given by the scaled Gerschgorin method and thus create tighter convex underestimators for the BB algorithm. We apply the new method and compare it with the scaled Gerschgorin on randomly generated interval symmetric matrices as well as interval Hessians taken from test functions. As a measure of comparison, we use the maximal separation distance between the original function and the underestimator. Based on the results obtained, we conclude that the proposed refinement method can significantly reduce the maximal separation distance when compared to the scaled Gerschgorin method. This approach therefore has the potential to improve the performance of the BB algorithm.
机译:对于BB算法而言,最重要的是计算确保低估量凸性的值。这些值的改善(减少)可能会导致估计值偏低,从而提高算法的性能。例如,它由Wechsung等人展示。 (J Glob Optim 58(3):429-438,2014),聚类效应的出现可能取决于值的大小。因此,我们提出了一种细化方法,该方法可以改善(减少)缩放的Gerschgorin方法给出的值的大小,从而为BB算法创建更紧密的凸低估量。我们应用新方法,并将其与缩放的Gerschgorin进行比较,以随机生成的区间对称矩阵以及从测试函数中获取的区间Hessian。为了进行比较,我们使用原始函数和低估器之间的最大距离。根据获得的结果,我们得出结论,与缩放的Gerschgorin方法相比,提出的改进方法可以显着减小最大分离距离。因此,该方法具有改善BB算法性能的潜力。

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