Tight Conditional Lower Bounds for Approximating Diameter in Directed Graphs
Mina Dalirrooyfard, Nicole Wein

TL;DR
This paper proves that the simple 2-approximation algorithm for directed graph diameter is conditionally optimal under SETH, establishing tight bounds for approximation ratios and running times.
Contribution
It completely resolves the open problem of the optimality of the 2-approximation algorithm for directed graphs under SETH.
Findings
The 2-approximation algorithm is conditionally optimal under SETH.
Established a tight trade-off between approximation ratio and running time for directed graphs.
Provided a series of lower bounds matching existing algorithms for various approximation factors.
Abstract
Among the most fundamental graph parameters is the Diameter, the largest distance between any pair of vertices. Computing the Diameter of a graph with edges requires time under the Strong Exponential Time Hypothesis (SETH), which can be prohibitive for very large graphs, so efficient approximation algorithms for Diameter are desired. There is a folklore algorithm that gives a -approximation for Diameter in time. Additionally, a line of work concludes with a -approximation algorithm for Diameter in weighted directed graphs that runs in time. The -approximation algorithm is known to be tight under SETH: Roditty and Vassilevska W. proved that under SETH any approximation algorithm for Diameter in undirected unweighted graphs requires time, and then Backurs, Roditty, Segal, Vassilevska W., and…
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