On the hardness of finding balanced independent sets in random bipartite graphs

Series
Graph Theory Seminar
Time
Tuesday, October 24, 2023 - 3:30pm for 1 hour (actually 50 minutes)
Location
Clough Commons room 102
Speaker
Yuzhou Wang – Georgia Tech – ywang3694@gatech.edu
Organizer
Tom Kelly

We consider the algorithmic problem of finding large balanced independent sets in sparse random bipartite graphs, and more generally the problem of finding independent sets with specified proportions of vertices on each side of the bipartition. In a bipartite graph it is trivial to find an independent set of density at least half (take one of the partition classes). In contrast, in a random bipartite graph of average degree d, the largest balanced independent sets (containing equal number of vertices from each class) are typically of density (2 + od(1)) log d/d . Can we find such large balanced independent sets in these graphs efficiently? By utilizing the overlap gap property and the low-degree algorithmic framework, we prove that local and low-degree algorithms (even those that know the bipartition) cannot find balanced independent sets of density greater than (1 + ε) log d/d for any ε > 0 fixed and d large but constant.