Quantum complexity of minimum cut

Simon Apers, Troy Lee
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引用次数: 4

Abstract

The minimum cut problem in an undirected and weighted graph G is to find the minimum total weight of a set of edges whose removal disconnects G. We completely characterize the quantum query and time complexity of the minimum cut problem in the adjacency matrix model. If G has n vertices and edge weights at least 1 and at most τ, we give a quantum algorithm to solve the minimum cut problem using [EQUATION] queries and time. Moreover, for every integer 1 ≤ τ ≤ n we give an example of a graph G with edge weights 1 and τ such that solving the minimum cut problem on G requires [EQUATION] queries to the adjacency matrix of G. These results contrast with the classical randomized case where Ω(n2) queries to the adjacency matrix are needed in the worst case even to decide if an unweighted graph is connected or not. In the adjacency array model, when G has m edges the classical randomized complexity of the minimum cut problem is [EQUATION]. We show that the quantum query and time complexity are [EQUATION] and [EQUATION], respectively, where again the edge weights are between 1 and τ. For dense graphs we give lower bounds on the quantum query complexity of Ω(n3/2) for τ ≥ 1 and Ω(τn) for any 1 ≤ τ ≤ n. Our query algorithm uses a quantum algorithm for graph sparsification by Apers and de Wolf (FOCS 2020) and results on the structure of near-minimum cuts by Kawarabayashi and Thorup (STOC 2015) and Rubinstein, Schramm and Weinberg (ITCS 2018). Our time efficient implementation builds on Karger's tree packing technique (STOC 1996).
最小割的量子复杂度
无向加权图G的最小割问题是求出一组边的最小总权值,这些边的移除使G断开。我们在邻接矩阵模型中完整表征了最小割问题的量子查询和时间复杂度。如果G有n个顶点且边权至少为1且最大为τ,我们给出了一个使用[EQUATION]查询和时间求解最小割问题的量子算法。此外,对于每一个整数1≤τ≤n,我们给出了一个边权为1和τ的图G的例子,使得解决G上的最小割问题需要查询G的邻接矩阵。这些结果与经典随机情况形成对比,在最坏情况下,甚至需要查询Ω(n2)邻接矩阵来决定一个未加权的图是否连通。在邻接数组模型中,当G有m条边时,最小割问题的经典随机化复杂度为[式]。我们表明,量子查询和时间复杂度分别为[EQUATION]和[EQUATION],其中边缘权重仍然在1和τ之间。对于密集图,我们给出了τ≥1时量子查询复杂度Ω(n3/2)和任意1≤τ≤n时量子查询复杂度Ω(τn)的下界。我们的查询算法使用了Apers和de Wolf (FOCS 2020)的量子图稀疏化算法,以及Kawarabayashi和Thorup (STOC 2015)和Rubinstein, Schramm和Weinberg (ITCS 2018)的近最小切结构结果。我们的时间效率实现建立在更大的树包装技术(STOC 1996)。
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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