Hypergraphs have attracted increasing attention in recent years thanks to their flexibility in naturally modeling a broad range of systems where high-order relationships exist among their interacting parts. This survey reviews the newly born hypergraph representation learning problem, whose goal is to learn a function to project objects - most commonly nodes - of an input hyper-network into a latent space such that both the structural and relational properties of the network can be encoded and preserved. We provide a thorough overview of existing literature and offer a new taxonomy of hypergraph embedding methods by identifying three main families of techniques, i.e., spectral, proximity-preserving, and (deep) neural networks. For each fami...
Graph neural networks generalize conventional neural networks to graph-structured data and have rece...
With the advent of big data and the information age, the data magnitude of various complex networks ...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
In this paper, we present a hypergraph neural networks (HGNN) framework for data representation lear...
Recently, graph neural networks have been widely used for network embedding because of their promine...
We usually endow the investigated objects with pairwise relationships, which can be illustrated as g...
Network embedding has recently attracted lots of attentions in data mining. Existing network embeddi...
Most network representation learning approaches only consider the pairwise relationships between the...
The world around us is composed of objects each having relations with other objects. The objects and...
Hypergraph representations are both more efficient and better suited to describe data characterized ...
Network embedding is a promising field and is important for various network analysis tasks, such as ...
In this review I present several representation learning methods, and discuss the latest advancement...
Hypergraph neural networks (HyperGNNs) are a family of deep neural networks designed to perform infe...
Graphs are a natural model for representing binary relations. However, it is difficult to use graphs...
This thesis investigates the potential of hypergraphs for capturing higher-order relations between o...
Graph neural networks generalize conventional neural networks to graph-structured data and have rece...
With the advent of big data and the information age, the data magnitude of various complex networks ...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
In this paper, we present a hypergraph neural networks (HGNN) framework for data representation lear...
Recently, graph neural networks have been widely used for network embedding because of their promine...
We usually endow the investigated objects with pairwise relationships, which can be illustrated as g...
Network embedding has recently attracted lots of attentions in data mining. Existing network embeddi...
Most network representation learning approaches only consider the pairwise relationships between the...
The world around us is composed of objects each having relations with other objects. The objects and...
Hypergraph representations are both more efficient and better suited to describe data characterized ...
Network embedding is a promising field and is important for various network analysis tasks, such as ...
In this review I present several representation learning methods, and discuss the latest advancement...
Hypergraph neural networks (HyperGNNs) are a family of deep neural networks designed to perform infe...
Graphs are a natural model for representing binary relations. However, it is difficult to use graphs...
This thesis investigates the potential of hypergraphs for capturing higher-order relations between o...
Graph neural networks generalize conventional neural networks to graph-structured data and have rece...
With the advent of big data and the information age, the data magnitude of various complex networks ...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...