© 2016 IEEE. Advances in social networking and communication technologies have witnessed an increasing number of applications where data is not only characterized by rich content information, but also connected with complex relationships representing social roles and dependencies between individuals. To enable knowledge discovery from such networked data, network representation learning (NRL) aims to learn vector representations for network nodes, such that off-The-shelf machine learning algorithms can be directly applied. To date, existing NRL methods either primarily focus on network structure or simply combine node content and topology for learning. We argue that in information networks, information is mainly originated from three source...
Using the structural link information in homophily-rich network graphs can potentially improve node ...
abstract: The popularity of social media has generated abundant large-scale social networks, which a...
International audienceWe address the task of node classification in heterogeneous networks, where th...
Embedding network data into a low-dimensional vector space has shown promising performance for many ...
Embedding network data into a low-dimensional vector space has shown promising performance for many ...
In this review I present several representation learning methods, and discuss the latest advancement...
Real-world information networks are increasingly occurring across various disciplines including onli...
2017-12-13The increasing growth of network data such as online social networks and linked documents ...
In this review I present several representation learning methods, and discuss the latest advancement...
Network representation learning is a machine learning method that maps network topology and node inf...
Representation learning (RL) for social networks facilitates real-world tasks such as visualization,...
Representation learning (RL) for social networks facilitates real-world tasks such as visualization,...
Representation learning aims to encode the relationships of research objects into low-dimensional, c...
Using the structural link information in homophily-rich network graphs can potentially improve node ...
In network analysis, homophily refers to a tendency of similar objects to be more likely to be conne...
Using the structural link information in homophily-rich network graphs can potentially improve node ...
abstract: The popularity of social media has generated abundant large-scale social networks, which a...
International audienceWe address the task of node classification in heterogeneous networks, where th...
Embedding network data into a low-dimensional vector space has shown promising performance for many ...
Embedding network data into a low-dimensional vector space has shown promising performance for many ...
In this review I present several representation learning methods, and discuss the latest advancement...
Real-world information networks are increasingly occurring across various disciplines including onli...
2017-12-13The increasing growth of network data such as online social networks and linked documents ...
In this review I present several representation learning methods, and discuss the latest advancement...
Network representation learning is a machine learning method that maps network topology and node inf...
Representation learning (RL) for social networks facilitates real-world tasks such as visualization,...
Representation learning (RL) for social networks facilitates real-world tasks such as visualization,...
Representation learning aims to encode the relationships of research objects into low-dimensional, c...
Using the structural link information in homophily-rich network graphs can potentially improve node ...
In network analysis, homophily refers to a tendency of similar objects to be more likely to be conne...
Using the structural link information in homophily-rich network graphs can potentially improve node ...
abstract: The popularity of social media has generated abundant large-scale social networks, which a...
International audienceWe address the task of node classification in heterogeneous networks, where th...