Hypergraph cuts above the average
Abstract
An r-cut of a k-uniform hypergraph H is a partition of the vertex set of H into r parts and the size of the cut is the number of edges which have a vertex in each part. A classical result of Edwards says that every m-edge graph has a 2-cut of size , and this is best possible. That is, there exist cuts which exceed the expected size of a random cut by some multiple of the standard deviation. We study analogues of this and related results in hypergraphs. First, we observe that similarly to graphs, every m-edge k-uniform hypergraph has an r-cut whose size is larger than the expected size of a random r-cut. Moreover, in the case where k=3 and r=2 this bound is best possible and is attained by Steiner triple systems. Surprisingly, for all other cases (that is, if or ), we show that every m-edge k-uniform hypergraph has an r-cut whose size is larger than the expected size of a random r-cut. This is a significant difference in behaviour, since the amount by which the size of the largest cut exceeds the expected size of a random cut is now considerably larger than the standard deviation.
Keywords
Cite
@article{arxiv.1803.08462,
title = {Hypergraph cuts above the average},
author = {David Conlon and Jacob Fox and Matthew Kwan and Benny Sudakov},
journal= {arXiv preprint arXiv:1803.08462},
year = {2019}
}