Uncovering the Largest Community in Social Networks at Scale

Uncovering the Largest Community in Social Networks at Scale

Shohei Matsugu, Yasuhiro Fujiwara, Hiroaki Shiokawa

Proceedings of the Thirty-Second International Joint Conference on Artificial Intelligence
Main Track. Pages 2251-2260. https://doi.org/10.24963/ijcai.2023/250

The Maximum k-Plex Search (MPS) can find the largest k-plex, which is a generalization of the largest clique. Although MPS is commonly used in AI to effectively discover real-world communities of social networks, existing MPS algorithms suffer from high computational costs because they iteratively scan numerous nodes to find the largest k-plex. Here, we present an efficient MPS algorithm called Branch-and-Merge (BnM), which outputs an exact maximum k-plex. BnM merges unnecessary nodes to explore a smaller graph than the original one. Extensive evaluations on real-world social networks demonstrate that BnM significantly outperforms other state-of-the-art MPS algorithms in terms of running time.
Keywords:
Data Mining: DM: Mining text, web, social media
Data Mining: DM: Applications