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Smoothed Analysis of Integer Programming

机译:平滑分析整数规划

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摘要

We present a probabilistic analysis of integer linear programs (ILPs). More specifically, we study ILPs in a so-called smoothed analysis in which it is assumed that first Ian adversary specifies the coefficients of an integer program and then (some of) these coefficients are randomly perturbed, e.g., using a Gaussian or a uniform distribution with small standard deviation. In this probabilistic model, we investigate structural properties of ILPs and apply them to the analysis of algorithms. For example, we prove a lower bound on the slack of the optimal solution. As a result of our analysis, we are able to specify the smoothed complexity of classes of ILPs in terms of their worst case complexity. For example, we obtain polynomial smoothed complexity for packing and covering problems with any fixed number of constraints. Previous results of this kind were restricted to the case of binary programs.
机译:我们对整数线性程序(ILPS)呈现了概率分析。更具体地,我们研究ILPS在所谓的平滑分析中,假设第一IAN敌人指定整数程序的系数,然后(一些)这些系数是随机扰动的,例如,使用高斯或均匀分布具有小标准偏差。在这种概率模型中,我们调查ILPS的结构性,并将其应用于算法的分析。例如,我们在最佳解决方案的松弛上证明了一个下限。由于我们的分析,我们能够在最糟糕的复杂性方面指定ILPS类的平滑复杂性。例如,我们获得多项式平滑的复杂性,用于包装和覆盖任何固定数量的约束。此类的先前结果仅限于二进制程序的情况。

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