Frontier Prize (best paper)International audienceWhile graph embedding aims at learning low-dimensional representations of nodes encompassing the graph topology, word embedding focus on learning word vectors that encode semantic properties of the vocabulary. The first finds applications on tasks such as link prediction and node classification while the latter is systematically considered in natural language processing. Most of the time, graph and word embeddings are considered on their own as distinct tasks. However, word co-occurrence matrices, widely used to extract word embeddings, can be seen as graphs. Furthermore, most network embedding techniques rely either on a word embedding methodology (Word2vec) or on matrix factorization, also ...
Graph embedding is a transformation of nodes of a graph into a set of vectors. A good embedding shou...
In this thesis, we make and evaluate procedures for converting between different lexical semantic re...
Graph embedding techniques, which learn low-dimensional representations of a graph, are achieving st...
Frontier Prize (best paper)International audienceWhile graph embedding aims at learning low-dimensio...
© 2018 IEEE. Attributed network embedding aims to learn low-dimensional vector representations for n...
International audienceMost network embedding algorithms consist in measuring co-occurrences of nodes...
Graph representation learning (GRL) is a powerful techniquefor learning low-dimensional vector repre...
Graph Embedding, a learning paradigm that represents graph vertices, edges, and other semantic infor...
A significant portion of the data today, e.g, social networks, web connections, etc., can be modeled...
Feature representation has been one of the most important factors for the success of machine learnin...
Real-world information networks are increasingly occurring across various disciplines including onli...
Network embedding aims to learn the low-dimensional representations of nodes in networks. It preserv...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
Graph structures are a powerful abstraction of many real-world data, such as human interactions and ...
A graph is a very powerful abstract data type that can be used to model entities (nodes) and relatio...
Graph embedding is a transformation of nodes of a graph into a set of vectors. A good embedding shou...
In this thesis, we make and evaluate procedures for converting between different lexical semantic re...
Graph embedding techniques, which learn low-dimensional representations of a graph, are achieving st...
Frontier Prize (best paper)International audienceWhile graph embedding aims at learning low-dimensio...
© 2018 IEEE. Attributed network embedding aims to learn low-dimensional vector representations for n...
International audienceMost network embedding algorithms consist in measuring co-occurrences of nodes...
Graph representation learning (GRL) is a powerful techniquefor learning low-dimensional vector repre...
Graph Embedding, a learning paradigm that represents graph vertices, edges, and other semantic infor...
A significant portion of the data today, e.g, social networks, web connections, etc., can be modeled...
Feature representation has been one of the most important factors for the success of machine learnin...
Real-world information networks are increasingly occurring across various disciplines including onli...
Network embedding aims to learn the low-dimensional representations of nodes in networks. It preserv...
We present HARP, a novel method for learning low dimensional embeddings of a graph’s nodes which pre...
Graph structures are a powerful abstraction of many real-world data, such as human interactions and ...
A graph is a very powerful abstract data type that can be used to model entities (nodes) and relatio...
Graph embedding is a transformation of nodes of a graph into a set of vectors. A good embedding shou...
In this thesis, we make and evaluate procedures for converting between different lexical semantic re...
Graph embedding techniques, which learn low-dimensional representations of a graph, are achieving st...