A Near-Linear Time Approximation Algorithm for Beyond-Worst-Case Graph Clustering

Abstract

We consider the semi-random graph model of [Makarychev, Makarychev and Vijayaraghavan, STOC’12], where, given a random bipartite graph with $\alpha$ edges and an unknown bipartition $(A, B)$ of the vertex set, an adversary can add arbitrary edges inside each community and remove arbitrary edges from the cut $(A, B)$ (i.e. all adversarial changes are monotone with respect to the bipartition). For this model, a polynomial time algorithm [MMV’12] is known to approximate the Balanced Cut problem up to value $O(\alpha)$ as long as the cut $(A, B)$ has size $\Omega(\alpha)$. However, it consists of slow subroutines requiring optimal solutions for logarithmically many semidefinite programs. We study the fine-grained complexity of the problem and present the first near-linear time algorithm that achieves similar performances to that of [MMV’12]. Our algorithm runs in time $O(|V(G)|^{1+o(1)} + |E(G)|^{1+o(1)})$ and finds a balanced cut of value $O(\alpha).$ Our approach appears easily extendible to related problem, such as Sparsest Cut, and also yields an near-linear time $O(1)$-approximation to Dagupta’s objective function for hierarchical clustering [Dasgupta, STOC’16] for the semi-random hierarchical stochastic block model inputs of [Cohen-Addad, Kanade, Mallmann-Trenn, Mathieu, JACM’19].

Cite

Text

Cohen-Addad et al. "A Near-Linear Time Approximation Algorithm for Beyond-Worst-Case Graph Clustering." International Conference on Machine Learning, 2024.

Markdown

[Cohen-Addad et al. "A Near-Linear Time Approximation Algorithm for Beyond-Worst-Case Graph Clustering." International Conference on Machine Learning, 2024.](https://mlanthology.org/icml/2024/cohenaddad2024icml-nearlinear/)

BibTeX

@inproceedings{cohenaddad2024icml-nearlinear,
  title     = {{A Near-Linear Time Approximation Algorithm for Beyond-Worst-Case Graph Clustering}},
  author    = {Cohen-Addad, Vincent and D’Orsi, Tommaso and Mousavifar, Aida},
  booktitle = {International Conference on Machine Learning},
  year      = {2024},
  pages     = {9208-9229},
  volume    = {235},
  url       = {https://mlanthology.org/icml/2024/cohenaddad2024icml-nearlinear/}
}