International audienceNetwork embedding algorithms are able to learn latent feature representations of nodes, transforming networks into lower dimensional vector representations. Typical key applications, which have effectively been addressed using network embeddings, include link prediction, multilabel classification and community detection. In this paper, we propose Biased-Walk, a scalable, unsupervised feature learning algorithm that is based on biased random walks to sample context information about each node in the network. Our random-walk based sampling can behave as Breath-First-Search (BFS) and Depth-First-Search (DFS) samplings with the goal to capture homophily and role equivalence between the nodes in the network. We have perform...
International audienceGraph Representation Learning (GRL) has become a key paradigm in network analy...
Several state-of-the-art neural graph embedding methods are based on short random walks (stochastic ...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
International audienceNetwork embedding algorithms are able to learn latent feature representations ...
Network embedding aims at learning node representation by preserving the network topology. Previous ...
Network embedding aims at learning node representation by preserving the network topology. Previous ...
International audienceNetwork representation learning (NRL) methods have received significant attent...
International audienceNetwork representation learning (NRL) methods have received significant attent...
International audienceNetwork representation learning (NRL) methods have received significant attent...
International audienceNetwork representation learning (NRL) methods have received significant attent...
Information networks are commonly used in multiple applications since large amount of data exists in...
Information networks are commonly used in multiple applications since large amount of data exists in...
International audienceGraph Representation Learning (GRL) has become a key paradigm in network analy...
International audienceGraph Representation Learning (GRL) has become a key paradigm in network analy...
International audienceGraph Representation Learning (GRL) has become a key paradigm in network analy...
International audienceGraph Representation Learning (GRL) has become a key paradigm in network analy...
Several state-of-the-art neural graph embedding methods are based on short random walks (stochastic ...
Network embedding aims at learning the low dimensional representation of nodes. These representation...
International audienceNetwork embedding algorithms are able to learn latent feature representations ...
Network embedding aims at learning node representation by preserving the network topology. Previous ...
Network embedding aims at learning node representation by preserving the network topology. Previous ...
International audienceNetwork representation learning (NRL) methods have received significant attent...
International audienceNetwork representation learning (NRL) methods have received significant attent...
International audienceNetwork representation learning (NRL) methods have received significant attent...
International audienceNetwork representation learning (NRL) methods have received significant attent...
Information networks are commonly used in multiple applications since large amount of data exists in...
Information networks are commonly used in multiple applications since large amount of data exists in...
International audienceGraph Representation Learning (GRL) has become a key paradigm in network analy...
International audienceGraph Representation Learning (GRL) has become a key paradigm in network analy...
International audienceGraph Representation Learning (GRL) has become a key paradigm in network analy...
International audienceGraph Representation Learning (GRL) has become a key paradigm in network analy...
Several state-of-the-art neural graph embedding methods are based on short random walks (stochastic ...
Network embedding aims at learning the low dimensional representation of nodes. These representation...