Knowledge graph embedding aims to embed entities and relations into low-dimensional vector spaces. Most existing methods only focus on triple facts in knowledge graphs. In addition, models based on translation or distance measurement cannot fully represent complex relations. As well-constructed prior knowledge, entity types can be employed to learn the representations of entities and relations. In this paper, we propose a novel knowledge graph embedding model named TransET, which takes advantage of entity types to learn more semantic features. More specifically, circle convolution based on the embeddings of entity and entity types is utilized to map head entity and tail entity to type-specific representations, then translation-based score f...
Knowledge graph embedding aims at representing entities and relations in a knowledge graph as dense,...
The representing learning makes specialty of knowledge graph and it indicates the difference between...
We propose an entity-agnostic representation learning method for handling the problem of inefficient...
Knowledge graph completion aims to perform link prediction between entities. In this paper, we consi...
Knowledge graph embedding methods are important for knowledge graph completion (link prediction) due...
Knowledge graph completion aims to perform link pre-diction between entities. In this paper, we cons...
We deal with embedding a large scale knowledge graph composed of entities and relations into a conti...
Representation learning (RL) of knowledge graphs aims to project both entities and relations into a ...
Knowledge graphs are useful for many artificial intelligence (AI) tasks. However, knowledge graphs o...
Knowledge graph embedding represents entities and relations in knowledge graph as low-dimensional, c...
In addition to feature-based representations that characterize objects with feature vectors, relatio...
Knowledge graph, a typical multi-relational structure, includes large-scale facts of the world, yet ...
Nowadays, Knowledge Graphs (KGs) have become invaluable for various applications such as named entit...
Many knowledge repositories nowadays con-tain billions of triplets, i.e. (head-entity, re-lationship...
A Triple in knowledge-graph takes a form that consists of head, relation, tail. Triple Classificatio...
Knowledge graph embedding aims at representing entities and relations in a knowledge graph as dense,...
The representing learning makes specialty of knowledge graph and it indicates the difference between...
We propose an entity-agnostic representation learning method for handling the problem of inefficient...
Knowledge graph completion aims to perform link prediction between entities. In this paper, we consi...
Knowledge graph embedding methods are important for knowledge graph completion (link prediction) due...
Knowledge graph completion aims to perform link pre-diction between entities. In this paper, we cons...
We deal with embedding a large scale knowledge graph composed of entities and relations into a conti...
Representation learning (RL) of knowledge graphs aims to project both entities and relations into a ...
Knowledge graphs are useful for many artificial intelligence (AI) tasks. However, knowledge graphs o...
Knowledge graph embedding represents entities and relations in knowledge graph as low-dimensional, c...
In addition to feature-based representations that characterize objects with feature vectors, relatio...
Knowledge graph, a typical multi-relational structure, includes large-scale facts of the world, yet ...
Nowadays, Knowledge Graphs (KGs) have become invaluable for various applications such as named entit...
Many knowledge repositories nowadays con-tain billions of triplets, i.e. (head-entity, re-lationship...
A Triple in knowledge-graph takes a form that consists of head, relation, tail. Triple Classificatio...
Knowledge graph embedding aims at representing entities and relations in a knowledge graph as dense,...
The representing learning makes specialty of knowledge graph and it indicates the difference between...
We propose an entity-agnostic representation learning method for handling the problem of inefficient...