English

Large Scale Community-Aware Network Generation

Social and Information Networks 2025-11-26 v1 Machine Learning

Abstract

Community detection, or network clustering, is used to identify latent community structure in networks. Due to the scarcity of labeled ground truth in real-world networks, evaluating these algorithms poses significant challenges. To address this, researchers use synthetic network generators that produce networks with ground-truth community labels. RECCS is one such algorithm that takes a network and its clustering as input and generates a synthetic network through a modular pipeline. Each generated ground truth cluster preserves key characteristics of the corresponding input cluster, including connectivity, minimum degree, and degree sequence distribution. The output consists of a synthetically generated network, and disjoint ground truth cluster labels for all nodes. In this paper, we present two enhanced versions: RECCS+ and RECCS++. RECCS+ maintains algorithmic fidelity to the original RECCS while introducing parallelization through an orchestrator that coordinates algorithmic components across multiple processes and employs multithreading. RECCS++ builds upon this foundation with additional algorithmic optimizations to achieve further speedup. Our experimental results demonstrate that RECCS+ and RECCS++ achieve speedups of up to 49x and 139x respectively on our benchmark datasets, with RECCS++'s additional performance gains involving a modest accuracy tradeoff. With this newfound performance, RECCS++ can now scale to networks with over 100 million nodes and nearly 2 billion edges.

Keywords

Cite

@article{arxiv.2511.19717,
  title  = {Large Scale Community-Aware Network Generation},
  author = {Vikram Ramavarapu and João Alfredo Cardoso Lamy and Mohammad Dindoost and David A. Bader},
  journal= {arXiv preprint arXiv:2511.19717},
  year   = {2025}
}

Comments

22 pages, 10 figures, code made available at https://github.com/illinois-or-research-analytics/reccs

R2 v1 2026-07-01T07:53:11.891Z