Constant Approximation of Min-Distances in Near-Linear Time

S. Chechik, Tianyi Zhang
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引用次数: 1

Abstract

In a weighed directed graph $G=(V, E, \omega)$ with m edges and n vertices, we are interested in its basic graph parameters such as diameter, radius and eccentricities, under the nonstandard measure of min-distance which is defined for every pair of vertices $u, v \in V$ as the minimum of the shortest path distances from u to v and from v to u. Similar to standard shortest paths distances, computing graph parameters exactly in terms of min-distances essentially requires $\tilde{\Omega}(m n)$ time under plausible hardness conjectures 1. Hence, for faster running time complexities we have to tolerate approximations. Abboud, Vassilevska Williams and Wang [SODA 2016] were the first to study min-distance problems, and they obtained constant factor approximation algorithms in acyclic graphs, with running time $\tilde{O}(m)$ and $\tilde{O}(m \sqrt{n})$ for diameter and radius, respectively. The time complexity of radius in acyclic graphs was recently improved to $\tilde{O}(m)$ by Dalirrooyfard and Kaufmann [ICALP 2021], but at the cost of an $O(\log n)$ approximation ratio. For general graphs, the authors of [DWV+, ICALP 2019] gave the first constant factor approximation algorithm for diameter, radius and eccentricities which runs in time $\tilde{O}(m \sqrt{n})$; besides, for the diameter problem, the running time can be improved to $\tilde{O}(m)$ while blowing up the approximation ratio to $O(\log n)$. A natural question is whether constant approximation and near-linear time can be achieved simultaneously for diameter, radius and eccentricities; so far this is only possible for diameter in the restricted setting of acyclic graphs. In this paper, we answer this question in the affirmative by presenting near-linear time algorithms for all three parameters in general graphs.1As usual, the $\tilde{O}(\cdot)$ notation hides poly-logarithmic factors in n
近线性时间内最小距离的常数逼近
在一个有m条边和n个顶点的加权有向图$G=(V, E, \omega)$中,我们感兴趣的是它的基本图参数,如直径,半径和偏心率,在非标准度量的min-distance下,min-distance定义为每对顶点$u, v \in V$从u到v和从v到u的最短路径距离的最小值。在合理的硬度猜想下,用最小距离精确计算图参数本质上需要$\tilde{\Omega}(m n)$时间。因此,为了更快的运行时间复杂度,我们必须容忍近似。Abboud, Vassilevska Williams和Wang [SODA 2016]率先研究了最小距离问题,他们获得了无环图的常因子逼近算法,直径和半径的运行时间分别为$\tilde{O}(m)$和$\tilde{O}(m \sqrt{n})$。Dalirrooyfard和Kaufmann最近将非循环图中半径的时间复杂度提高到$\tilde{O}(m)$ [ICALP 2021],但代价是$O(\log n)$近似比。对于一般图形,[DWV+, ICALP 2019]的作者给出了第一个随时间运行的直径、半径和偏心率的常因子近似算法$\tilde{O}(m \sqrt{n})$;此外,对于直径问题,可以将运行时间提高到$\tilde{O}(m)$,同时将近似比提高到$O(\log n)$。一个自然的问题是,对于直径、半径和离心率是否可以同时实现常数近似和近似线性时间;到目前为止,这只适用于非环图的受限集的直径。在本文中,我们通过在一般图中给出这三个参数的近线性时间算法,肯定地回答了这个问题。与往常一样,$\tilde{O}(\cdot)$符号隐藏了n中的多对数因子
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