We model knowledge graphs for their completion by encoding each entity and relation into a numerical space. All previous work including Trans(E, H, R, and D) ignore the heterogeneity (some relations link many entity pairs and others do not) and the imbalance (the number of head entities and that of tail entities in a relation could be different) of knowledge graphs. In this paper, we propose a novel approach TranSparse to deal with the two issues. In TranSparse, transfer matrices are replaced by adaptive sparse matrices, whose sparse degrees are determined by the number of entities (or entity pairs) linked by relations. In experiments, we design structured and unstructured sparse patterns for transfer matrices and analyze their advantages a...
Knowledge graph embedding (KGE) models learn algebraic representations of the entities and relations...
Abstract. We present a general and novel framework for predicting links in multirelational graphs us...
Recent years have witnessed a rise in real-world data captured with rich structural information that...
Many knowledge repositories nowadays con-tain billions of triplets, i.e. (head-entity, re-lationship...
We deal with embedding a large scale knowledge graph composed of entities and relations into a conti...
Knowledge Graphs (KGs) are a widely used formalism for representing knowledge in the Web of Data. We...
Most of the existing knowledge graph embedding models are supervised methods and largely relying on ...
Knowledge graph embedding methods are important for knowledge graph completion (link prediction) due...
Knowledge graphs play a significant role in many intelligent systems such as semantic search and rec...
Knowledge graph completion aims to perform link prediction between entities. In this paper, we consi...
Despite their large sizes, modern Knowledge Graphs (KGs) are still highly incomplete. Statistical re...
Knowledge Graphs are a widely used formalism for representing knowledge in the Web of Data. We focus...
Knowledge graphs (KGs) serve as useful resources for various natural language processing application...
International audienceThe open nature of Knowledge Graphs (KG) often implies that they are incomplet...
In addition to feature-based representations that characterize objects with feature vectors, relatio...
Knowledge graph embedding (KGE) models learn algebraic representations of the entities and relations...
Abstract. We present a general and novel framework for predicting links in multirelational graphs us...
Recent years have witnessed a rise in real-world data captured with rich structural information that...
Many knowledge repositories nowadays con-tain billions of triplets, i.e. (head-entity, re-lationship...
We deal with embedding a large scale knowledge graph composed of entities and relations into a conti...
Knowledge Graphs (KGs) are a widely used formalism for representing knowledge in the Web of Data. We...
Most of the existing knowledge graph embedding models are supervised methods and largely relying on ...
Knowledge graph embedding methods are important for knowledge graph completion (link prediction) due...
Knowledge graphs play a significant role in many intelligent systems such as semantic search and rec...
Knowledge graph completion aims to perform link prediction between entities. In this paper, we consi...
Despite their large sizes, modern Knowledge Graphs (KGs) are still highly incomplete. Statistical re...
Knowledge Graphs are a widely used formalism for representing knowledge in the Web of Data. We focus...
Knowledge graphs (KGs) serve as useful resources for various natural language processing application...
International audienceThe open nature of Knowledge Graphs (KG) often implies that they are incomplet...
In addition to feature-based representations that characterize objects with feature vectors, relatio...
Knowledge graph embedding (KGE) models learn algebraic representations of the entities and relations...
Abstract. We present a general and novel framework for predicting links in multirelational graphs us...
Recent years have witnessed a rise in real-world data captured with rich structural information that...