Minimum cut and minimum \(k\)-cut in hypergraphs via branching contractions

Joint work with Debmalya Panigrahi, Fred Zhang

ACM Transactions on Algorithms (TALG), 19(2), Article No. 13, 2023

Abstract

On hypergraphs with \(m\) hyperedges and \(n\) vertices, where \(p\) denotes the total size of the hyperedges, we provide the following results:

Both of our algorithms are Monte Carlo, i.e., they return a minimum \(k\)-cut (or minimum cut) with high probability. These algorithms are obtained as instantiations of a generic branching randomized contraction technique on hypergraphs, which extends the celebrated work of Karger and Stein on recursive contractions in graphs. Our techniques and results also extend to the problems of minimum hedge-cut and minimum hedge-\(k\)-cut on hedgegraphs, which generalize hypergraphs.

Extended abstract in Proceedings of the 30th Annual ACM-SIAM Symposium on Discrete Algorithms (SODA), 881–896, 2019.