Graph neural networks generalize conventional neural networks to graph-structured data and have received widespread attention due to their impressive representation ability. In spite of the remarkable achievements, the performance of Euclidean models in graph-related learning is still bounded and limited by the representation ability of Euclidean geometry, especially for datasets with highly non-Euclidean latent anatomy. Recently, hyperbolic space has gained increasing popularity in processing graph data with tree-like structure and power-law distribution, owing to its exponential growth property. In this survey, we comprehensively revisit the technical details of the current hyperbolic graph neural networks, unifying them into a general fr...
This program has been imported from the CPC Program Library held at Queen's University Belfast (1969...
Hypergraphs have attracted increasing attention in recent years thanks to their flexibility in natur...
Representation learning over temporal networks has drawn considerable attention in recent years. Eff...
Graph-structured data are widespread in real-world applications, such as social networks, recommende...
Due to its geometric properties, hyperbolic space can support high-fidelity embeddings of tree- and ...
Abstract Recently, hyperbolic deep neural networks (HDNNs) have been gaining momentum as the deep r...
Recently, Hyperbolic Spaces in the context of Non-Euclidean Deep Learning have gained popularity bec...
Network science is driven by the question which properties large real-world networks have and how we...
First version. The package generating the experimental results will be made public in the near futur...
In this paper, we present a hypergraph neural networks (HGNN) framework for data representation lear...
Prior approaches for multimodal sentiment and emotion recognition (SER) exploit input data represent...
Hyperbolic space can naturally embed hierarchies, unlike Euclidean space. Hyperbolic Neural Networks...
Representing graphs as sets of node embeddings in certain curved Riemannian manifolds has recently g...
This paper introduces an end-to-end residual network that operates entirely on the Poincar\'e ball m...
Many biological systems have intrinsic hierarchical structure, which can be best described by hyperb...
This program has been imported from the CPC Program Library held at Queen's University Belfast (1969...
Hypergraphs have attracted increasing attention in recent years thanks to their flexibility in natur...
Representation learning over temporal networks has drawn considerable attention in recent years. Eff...
Graph-structured data are widespread in real-world applications, such as social networks, recommende...
Due to its geometric properties, hyperbolic space can support high-fidelity embeddings of tree- and ...
Abstract Recently, hyperbolic deep neural networks (HDNNs) have been gaining momentum as the deep r...
Recently, Hyperbolic Spaces in the context of Non-Euclidean Deep Learning have gained popularity bec...
Network science is driven by the question which properties large real-world networks have and how we...
First version. The package generating the experimental results will be made public in the near futur...
In this paper, we present a hypergraph neural networks (HGNN) framework for data representation lear...
Prior approaches for multimodal sentiment and emotion recognition (SER) exploit input data represent...
Hyperbolic space can naturally embed hierarchies, unlike Euclidean space. Hyperbolic Neural Networks...
Representing graphs as sets of node embeddings in certain curved Riemannian manifolds has recently g...
This paper introduces an end-to-end residual network that operates entirely on the Poincar\'e ball m...
Many biological systems have intrinsic hierarchical structure, which can be best described by hyperb...
This program has been imported from the CPC Program Library held at Queen's University Belfast (1969...
Hypergraphs have attracted increasing attention in recent years thanks to their flexibility in natur...
Representation learning over temporal networks has drawn considerable attention in recent years. Eff...