EC-SBM Synthetic Network Generator
Abstract
Generating high-quality synthetic networks with realistic community structure is vital to effectively evaluate community detection algorithms. In this study, we propose a new synthetic network generator called the Edge-Connected Stochastic Block Model (EC-SBM). The goal of EC-SBM is to take a given clustered real-world network and produce a synthetic network that resembles the clustered real-world network with respect to both network and community-specific criteria. In particular, we focus on simulating the internal edge connectivity of the clusters in the reference clustered network. Our extensive performance study on large real-world networks shows that EC-SBM has high accuracy in both network and community-specific criteria, and is generally more accurate than current alternative approaches for this problem. Furthermore, EC-SBM is fast enough to scale to real-world networks with millions of nodes.
Keywords
Cite
@article{arxiv.2502.03662,
title = {EC-SBM Synthetic Network Generator},
author = {The-Anh Vu-Le and Lahari Anne and George Chacko and Tandy Warnow},
journal= {arXiv preprint arXiv:2502.03662},
year = {2025}
}