Amir Abboud, Holger Dell, et al.
STOC 2018
We investigate the time-complexity of the All-Pairs Max-Flow problem: Given a graph with n nodes and m edges, compute for all pairs of nodes the maximum-flow value between them. If Max-Flow (the version with a given source-sink pair s,t) can be solved in time T(m), then an O(n2)·T(m) is a trivial upper bound. But can we do better? For directed graphs, recent results in fine-grained complexity suggest that this time bound is essentially optimal. In contrast, for undirected graphs with edge capacities, a seminal algorithm of Gomory and Hu (1961) runs in much faster time O(n) · T(m). Under the plausible assumption that Max-Flow can be solved in near-linear time m1+o(1), this half-century old algorithm yields an nm1+o(1) bound. Several other algorithms have been designed through the years, including Õ(mn) time for unit-capacity edges (unconditionally), but none of them break the O(mn) barrier. Meanwhile, no super-linear lower bound was shown for undirected graphs. We design the first hardness reductions for All-Pairs Max-Flow in undirected graphs, giving an essentially optimal lower bound for the node-capacities setting. For edge capacities, our efforts to prove similar lower bounds have failed, but we have discovered a surprising new algorithm that breaks the O(mn) barrier for graphs with unit-capacity edges! Assuming T(m) = m1+o(1), our algorithm runs in time m3/2+o(1) and outputs a cut-equivalent tree (similarly to the Gomory-Hu algorithm). Even with current Max-Flow algorithms we improve state-of-the-art as long as m = O(n5/3−ε). Finally, we explain the lack of lower bounds by proving a non-reducibility result. This result is based on a new quasi-linear time Õ(m) non-deterministic algorithm for constructing a cut-equivalent tree and may be of independent interest.
Amir Abboud, Holger Dell, et al.
STOC 2018
Eran Halperin, Guy Kortsarz, et al.
SIAM Journal on Computing
Julia Chuzhoy, Sudipto Guha, et al.
Journal of the ACM
Parikshit Gopalan, T.S. Jayram, et al.
SODA 2007