Traditional network models capture pairwise interactions between entities, but many real-world systems involve group interactions that go beyond simple edges. Examples range from scientific collaborations with multiple co-authors, to biochemical reactions involving several molecules, to group conversations in social settings. These higher-order interactions are naturally modeled with hypergraphs and related structures, which extend network science beyond the pairwise paradigm.
In collaboration with Francesco Lotito (PhD, University of Trento, co-advised with Federico Battiston), we have contributed to the methodological foundations of higher-order network analysis. Our work spans several directions:
-
Motif analysis in hypergraphs. We developed exact and sampling algorithms to detect overrepresented patterns of higher-order interactions, extending the classic notion of network motifs [CP22] [SC24] .
-
Hyperlink communities. We introduced a framework to uncover mesoscale structures in hypergraphs, capturing hierarchical organization and overlapping communities [CN24].
-
Directed and multiplex hypergraphs. We proposed measures for reciprocity, motif analysis, and multilayer connectivity in systems with directed or multiplex higher-order interactions.
-
Software and data. We created Hypergraphx, one of the leading Python libraries for higher-order network analysis, and contributed to Hypergraph-data, a curated repository of real-world hypergraph datasets [JCN23] .
[CP22] Quintino Francesco Lotito, Federico Musciotto, Alberto Montresor, and Federico Battiston. Higher-order motif analysis in hypergraphs. Communications Physics, 5(1):79, 2022. ISBN 2399–3650. [PDF], [Bibtex].
[JCN23] Quintino Francesco Lotito, Martina Contisciani, Caterina De Bacco, Leonardo Di Gaetano, Luca Gallo, Alberto Montresor, Federico Musciotto, Nicolò Ruggeri, and Federico Battiston. Hypergraphx: a library for higher-order network analysis. Journal of Complex Networks, 11(3), May 2023. [PDF], [Bibtex].
[SC24] Quintino Francesco Lotito, Federico Musciotto, Federico Battiston, and Alberto Montresor. Exact and sampling methods for mining higher-order motifs in large hypergraphs. Springer Computing, pages 475–494, February 2024. [PDF], [Bibtex].
[CN24] Quintino Francesco Lotito, Federico Musciotto, Alberto Montresor, and Federico Battiston. Hyperlink communities in higher-order networks. J. Complex Networks, 12(2), April 2024. [PDF], [Bibtex].
[ANS24] Quintino Francesco Lotito, Alberto Montresor, and Federico Battiston. Multiplex measures for higher-order networks. Applied Network Science, 9(55), September 2024. [PDF] , [Bibtex] .