International audienceKnowledge graph embedding models encode elements of a graph into a low-dimensional space that supports several downstream tasks. This work is concerned with the recommendation task, which we approach as a link prediction task on a single target relation performed in the embedding space. Training an embedding model requires negative sampling, which consists in corrupting the head or the tail of positive triples to generate negative ones. Although knowledge graph embedding models and negative sampling have extensively been investigated for link prediction, their combined use for performing recommendations over knowledge graphs remains largely unexplored in the literature. In this work, we propose two specialization strat...
Knowledge Graph Embeddings, i.e., projections of entities and relations to lower dimensional spaces,...
Knowledge graph representation is an important embedding technology that supports a variety of machi...
Link Prediction aims at tackling Knowledge Graph incompleteness by inferring new facts based on the ...
International audienceKnowledge graph (KG) embedding methods learn the low dimensional vector repres...
International audienceSeveral KG embedding methods were proposed to learn low dimensional vector re...
Embedding models have been successfully exploited for Knowledge Graph refinement. In these models, t...
In knowledge graph representation learning, link prediction is among the most popular and influentia...
Embedding knowledge graphs is a common method used to encode information from the graph at hand proj...
Knowledge graph embedding (KGE) models learn algebraic representations of the entities and relations...
Knowledge Graph Embedding models have become an important area of machine learning.Those models prov...
The ability of knowledge graphs to represent complex relationships at scale has led to their adoptio...
We focus on the problem of link prediction in Knowledge Graphs, with the goal of discovering new fac...
In the past years, knowledge graphs have proven to be beneficial for recommender systems, efficient...
Knowledge Graph Embedding algorithms learn low-dimensional vector representa- tions for facts in a K...
This thesis proposes a novel Knowledge Graph (KG) embedding model for Link Prediction (LP) for Knowl...
Knowledge Graph Embeddings, i.e., projections of entities and relations to lower dimensional spaces,...
Knowledge graph representation is an important embedding technology that supports a variety of machi...
Link Prediction aims at tackling Knowledge Graph incompleteness by inferring new facts based on the ...
International audienceKnowledge graph (KG) embedding methods learn the low dimensional vector repres...
International audienceSeveral KG embedding methods were proposed to learn low dimensional vector re...
Embedding models have been successfully exploited for Knowledge Graph refinement. In these models, t...
In knowledge graph representation learning, link prediction is among the most popular and influentia...
Embedding knowledge graphs is a common method used to encode information from the graph at hand proj...
Knowledge graph embedding (KGE) models learn algebraic representations of the entities and relations...
Knowledge Graph Embedding models have become an important area of machine learning.Those models prov...
The ability of knowledge graphs to represent complex relationships at scale has led to their adoptio...
We focus on the problem of link prediction in Knowledge Graphs, with the goal of discovering new fac...
In the past years, knowledge graphs have proven to be beneficial for recommender systems, efficient...
Knowledge Graph Embedding algorithms learn low-dimensional vector representa- tions for facts in a K...
This thesis proposes a novel Knowledge Graph (KG) embedding model for Link Prediction (LP) for Knowl...
Knowledge Graph Embeddings, i.e., projections of entities and relations to lower dimensional spaces,...
Knowledge graph representation is an important embedding technology that supports a variety of machi...
Link Prediction aims at tackling Knowledge Graph incompleteness by inferring new facts based on the ...