A sublinear query quantum algorithm for s-t minimum cut on dense simple graphs
Abstract
An s-t minimum cut in a graph corresponds to a minimum weight subset of edges whose removal disconnects vertices s and t. Finding such a cut is a classic problem that is dual to that of finding a maximum flow from s to t. In this work we describe a quantum algorithm for the minimum s-t cut problem on undirected graphs. For an undirected graph with n vertices, m edges, and integral edge weights bounded by W, the algorithm computes with high probability the weight of a minimum s-t cut after O(m n5/6 W1/3) queries to the adjacency list of G. For simple graphs this bound is always O(n11/6), even in the dense case when m = (n2). In contrast, a randomized algorithm must make (m) queries to the adjacency list of a simple graph G even to decide whether s and t are connected.
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