International audienceThe creation of social ties is largely determined by the entangled effects of people's similarities in terms of individual characters and friends. However, feature and structural characters of people usually appear to be correlated, making it difficult to determine which has greater responsibility in the formation of the emergent network structure. We propose \emph{AN2VEC}, a node embedding method which ultimately aims at disentangling the information shared by the structure of a network and the features of its nodes. Building on the recent developments of Graph Convolutional Networks (GCN), we develop a multitask GCN Variational Autoencoder where different dimensions of the generated embeddings can be dedicated to enc...
Networks are widely adopted to represent the relations between objects in many disciplines. In real-...
In the last few years, graphs have become an instinctive representative tool to better study complex...
In the last few years, graphs have become an instinctive representative tool to better study complex...
International audienceThe creation of social ties is largely determined by the entangled effects of ...
The creation of social ties is largely determined by the entangled effects of people's similarities ...
International audienceThe creation of social ties is largely determined by the entangled effects of ...
© 2019 IEEE. Graphs are ubiquitous for describing and modeling complicated data structures, and grap...
Multiplex networks have been widely used in information diffusion, social networks, transport, and b...
Embedding social network data into a low-dimensional vector space has shown promising performance fo...
Network-structured data is becoming increasingly popular in many applications. However, these data p...
Graph Nerual Networks (GNNs) are effective models in graph embedding. It extracts shallow features a...
Graph embedding is a transformation of nodes of a graph into a set of vectors. A good embedding shou...
Complex networks emerge as a natural framework to describe real-life phe- nomena involving a group o...
Network embedding plays a crucial role in network analysis to provide effective representations for ...
Network embedding plays a crucial role in network analysis to provide effective representations for ...
Networks are widely adopted to represent the relations between objects in many disciplines. In real-...
In the last few years, graphs have become an instinctive representative tool to better study complex...
In the last few years, graphs have become an instinctive representative tool to better study complex...
International audienceThe creation of social ties is largely determined by the entangled effects of ...
The creation of social ties is largely determined by the entangled effects of people's similarities ...
International audienceThe creation of social ties is largely determined by the entangled effects of ...
© 2019 IEEE. Graphs are ubiquitous for describing and modeling complicated data structures, and grap...
Multiplex networks have been widely used in information diffusion, social networks, transport, and b...
Embedding social network data into a low-dimensional vector space has shown promising performance fo...
Network-structured data is becoming increasingly popular in many applications. However, these data p...
Graph Nerual Networks (GNNs) are effective models in graph embedding. It extracts shallow features a...
Graph embedding is a transformation of nodes of a graph into a set of vectors. A good embedding shou...
Complex networks emerge as a natural framework to describe real-life phe- nomena involving a group o...
Network embedding plays a crucial role in network analysis to provide effective representations for ...
Network embedding plays a crucial role in network analysis to provide effective representations for ...
Networks are widely adopted to represent the relations between objects in many disciplines. In real-...
In the last few years, graphs have become an instinctive representative tool to better study complex...
In the last few years, graphs have become an instinctive representative tool to better study complex...