Minimax Optimal Clustering of Bipartite Graphs with a Generalized Power Method

05/24/2022
by   Guillaume Braun, et al.
0

Clustering bipartite graphs is a fundamental task in network analysis. In the high-dimensional regime where the number of rows n_1 and the number of columns n_2 of the associated adjacency matrix are of different order, existing methods derived from the ones used for symmetric graphs can come with sub-optimal guarantees. Due to increasing number of applications for bipartite graphs in the high dimensional regime, it is of fundamental importance to design optimal algorithms for this setting. The recent work of Ndaoud et al (2022) improves the existing upper-bound for the misclustering rate in the special case where the columns (resp. rows) can be partitioned into L = 2 (resp. K = 2) communities. Unfortunately, their algorithm cannot be extended to the more general setting where K ≠ L ≥ 2. We overcome this limitation by introducing a new algorithm based on the power method. We derive conditions for exact recovery in the general setting where K ≠ L ≥ 2, and show that it recovers the result in Ndaoud et al (2022). We also derive a minimax lower bound on the misclustering error when K = L = 2, which matches the corresponding upper bound up to a constant factor.

READ FULL TEXT

Please sign up or login with your details

Forgot password? Click here to reset