Enumerating parametric global minimum cuts by random interleaving

David R Karger
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引用次数: 10

Abstract

Recently, Aissi et al. gave new counting and algorithmic bounds for parametric minimum cuts in a graph, where each edge cost is a linear combination of multiple cost criteria and different cuts become minimum as the coefficients of the linear combination are varied. In this article, we derive better bounds using a mathematically simpler argument. We provide faster algorithms for enumerating these cuts. We give a lower bound showing our upper bounds have roughly the right degree. Our results also immediately generalize to parametric versions of other problems solved by the Contraction Algorithm, including approximate min-cuts, multi-way cuts, and a matroid optimization problem. We also give a first generalization to nonlinear parametric minimum cuts.
通过随机交错枚举参数全局最小切割
最近,Aissi等人给出了图中参数最小切割的新计数和算法界,其中每个边缘成本是多个成本标准的线性组合,不同的切割随着线性组合系数的变化而变得最小。在本文中,我们使用一个数学上更简单的论证来推导更好的界。我们提供了更快的算法来枚举这些切割。我们给出了下界,表明上界的度数大致正确。我们的结果也立即推广到其他由收缩算法解决的问题的参数化版本,包括近似最小切割,多路切割和一个矩阵优化问题。我们也给出了非线性参数最小割的第一个推广。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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