RECCS: REALISTIC CLUSTER CONNECTIVITY SIMULATOR FOR SYNTHETIC NETWORK GENERATION

Lahari Anne, The Anh Vu-Le, Minhyuk Park, Tandy Warnow, George Chacko

Research output: Contribution to journalArticlepeer-review

Abstract

The limited availability of useful ground-truth communities in real-world networks presents a challenge to evaluating and selecting a "best"community detection method for a given network or family of networks. The use of comparable synthetic networks with planted ground-truths is one way to address this challenge. While several synthetic network generators can be used for this purpose, Stochastic Block Models (SBMs), when provided input parameters from real-world networks and clusterings, are well suited to producing networks that retain the properties of the network they are intended to model. We report, however, that SBMs can produce disconnected ground truth clusters; even under conditions where the input clusters are connected. In this study, we describe the REalistic Cluster Connectivity Simulator (RECCS), which, while retaining approximately the same quality for other network and cluster parameters, creates an SBM synthetic network and then modifies it to ensure an improved fit to cluster connectivity. We report results using parameters obtained from clustered real-world networks ranging up to 13.9 million nodes in size, and demonstrate an improvement over the unmodified use of SBMs for network generation.

Original languageEnglish (US)
Article number2540004
JournalAdvances in Complex Systems
Early online dateMay 21 2025
DOIs
StateE-pub ahead of print - May 21 2025

Keywords

  • community detection
  • Synthetic networks

ASJC Scopus subject areas

  • Control and Systems Engineering

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