Vectorial representations of graphs and relational structures, so-called graph embeddings, make it possible to apply standard tools from data mining, machine learning, and statistics to the graph domain. In particular, graph embeddings aim to capture important information about, both, the graph structure and available side information as a vector, to enable downstream tasks such as classification, regression, or clustering. Starting from the 1960s in chemoinformatics, research in various communities has resulted in a plethora of approaches, often with recurring ideas. However, most of the field advancements are driven by intuition and empiricism, often tailored to a specific application domain. Until recently, the area has received little s...
Graph and network models are essential for data science applications in computer science, social sci...
Knowledge graph embeddings are supervised learning models that learn vector representations of nodes...
International audienceIn the last decade Knowledge Graphs have undergone an impressive expansion, ma...
Graphs are natural representations of problems and data in many fields. For example, in computationa...
Graph Embedding for Pattern Analysis covers theory methods, computation, and applications widely use...
Graph embedding is a transformation of nodes of a graph into a set of vectors. A good embedding shou...
A multilayered graph is a dispensable data representation tool to comprehend and mine the richness a...
Abstract. In recent years graph embedding has emerged as a promising solution for enabling the expre...
International audienceIn recent years graph embedding has emerged as a promising solution for enabli...
In the last few years, graphs have become an instinctive representative tool to better study complex...
International audienceDefining similarities or distances between graphs is one of the bases of the s...
Graph structures are a powerful abstraction of many real-world data, such as human interactions and ...
Les travaux exposés dans cette thèse portent sur une contribution aux techniques de projection de gr...
International audienceGraphs provide a generic data structure widely used in chemo and bioin-formati...
Knowledge graph embeddings are supervised learning models that learn vector representations of nodes...
Graph and network models are essential for data science applications in computer science, social sci...
Knowledge graph embeddings are supervised learning models that learn vector representations of nodes...
International audienceIn the last decade Knowledge Graphs have undergone an impressive expansion, ma...
Graphs are natural representations of problems and data in many fields. For example, in computationa...
Graph Embedding for Pattern Analysis covers theory methods, computation, and applications widely use...
Graph embedding is a transformation of nodes of a graph into a set of vectors. A good embedding shou...
A multilayered graph is a dispensable data representation tool to comprehend and mine the richness a...
Abstract. In recent years graph embedding has emerged as a promising solution for enabling the expre...
International audienceIn recent years graph embedding has emerged as a promising solution for enabli...
In the last few years, graphs have become an instinctive representative tool to better study complex...
International audienceDefining similarities or distances between graphs is one of the bases of the s...
Graph structures are a powerful abstraction of many real-world data, such as human interactions and ...
Les travaux exposés dans cette thèse portent sur une contribution aux techniques de projection de gr...
International audienceGraphs provide a generic data structure widely used in chemo and bioin-formati...
Knowledge graph embeddings are supervised learning models that learn vector representations of nodes...
Graph and network models are essential for data science applications in computer science, social sci...
Knowledge graph embeddings are supervised learning models that learn vector representations of nodes...
International audienceIn the last decade Knowledge Graphs have undergone an impressive expansion, ma...