Hypergraphs are a powerful abstraction for modeling high-order interactions between a set of entities of interest and have been attracting a growing interest in the graph-learning literature. In particular, directed hypegraphs are crucial in their capability of representing real-world phenomena involving group relations where two sets of elements affect one another in an asymmetric way. Despite such a vast potential, an established solution to tackle graph-learning tasks on directed hypergraphs is still lacking. For this reason, in this paper we introduce the Generalized Directed Hypergraph Neural Network (GeDi-HNN), the first spectral-based Hypergraph Neural Network (HNN) capable of seamlessly handling hypergraphs with both directed and undirected hyperedges. GeDi-HNN relies on a graph-convolution operator which is built on top of the Generalized Directed Laplacian} , a novel complex-valued Hermitian matrix which we introduce in this paper. We prove that generalizes many previously-proposed Laplacian matrices to directed hypergraphs while enjoying several desirable spectral properties. Extensive computational experiments against state-of-the-art methods on real-world and synthetically-generated datasets demonstrate the efficacy of our proposed HNN. Thanks to effectively leveraging the directional information contained in these datasets, GeDi-HNN achieves a relative-percentage-difference improvement of 7% on average (with a maximum improvement of 23.19%) on the real-world datasets and of 65.3% on average on the synthetic ones
(2024). Let There be Direction in Hypergraph Neural Networks [journal article - articolo]. In TRANSACTIONS ON MACHINE LEARNING RESEARCH. Retrieved from https://hdl.handle.net/10446/304186
Let There be Direction in Hypergraph Neural Networks
Coniglio, Stefano;
2024-01-01
Abstract
Hypergraphs are a powerful abstraction for modeling high-order interactions between a set of entities of interest and have been attracting a growing interest in the graph-learning literature. In particular, directed hypegraphs are crucial in their capability of representing real-world phenomena involving group relations where two sets of elements affect one another in an asymmetric way. Despite such a vast potential, an established solution to tackle graph-learning tasks on directed hypergraphs is still lacking. For this reason, in this paper we introduce the Generalized Directed Hypergraph Neural Network (GeDi-HNN), the first spectral-based Hypergraph Neural Network (HNN) capable of seamlessly handling hypergraphs with both directed and undirected hyperedges. GeDi-HNN relies on a graph-convolution operator which is built on top of the Generalized Directed Laplacian} , a novel complex-valued Hermitian matrix which we introduce in this paper. We prove that generalizes many previously-proposed Laplacian matrices to directed hypergraphs while enjoying several desirable spectral properties. Extensive computational experiments against state-of-the-art methods on real-world and synthetically-generated datasets demonstrate the efficacy of our proposed HNN. Thanks to effectively leveraging the directional information contained in these datasets, GeDi-HNN achieves a relative-percentage-difference improvement of 7% on average (with a maximum improvement of 23.19%) on the real-world datasets and of 65.3% on average on the synthetic ones| File | Dimensione del file | Formato | |
|---|---|---|---|
|
2024-TMLR-GEDI.pdf
accesso aperto
Versione:
publisher's version - versione editoriale
Licenza:
Creative commons
Dimensione del file
1.41 MB
Formato
Adobe PDF
|
1.41 MB | Adobe PDF | Visualizza/Apri |
Pubblicazioni consigliate
Aisberg ©2008 Servizi bibliotecari, Università degli studi di Bergamo | Terms of use/Condizioni di utilizzo

