Multi-View Stochastic Block Models
Cohen-Addad, Vincent, d'Orsi, Tommaso, Lattanzi, Silvio, Nasser, Rajai
Graph clustering is a central topic in unsupervised learning with a multitude of practical applications. In recent years, multi-view graph clustering has gained a lot of attention for its applicability to real-world instances where one has access to multiple data sources. In this paper we formalize a new family of models, called \textit{multi-view stochastic block models} that captures this setting. For this model, we first study efficient algorithms that naively work on the union of multiple graphs. Then, we introduce a new efficient algorithm that provably outperforms previous approaches by analyzing the structure of each graph separately. Furthermore, we complement our results with an information-theoretic lower bound studying the limits of what can be done in this model. Finally, we corroborate our results with experimental evaluations.
Jun-7-2024
- Country:
- South America > Chile
- Europe > France
- Hauts-de-France > Nord > Lille (0.04)
- Asia > Middle East
- Jordan (0.04)
- Genre:
- Research Report > New Finding (0.54)
- Technology: