We examine the embedding approach to reason new relational facts from a large-scale knowledge graph and a text corpus. We propose a novel method of jointly em-bedding entities and words into the same continuous vector space. The embedding process attempts to preserve the relations between entities in the knowledge graph and the concurrences of words in the text corpus. Entity names and Wikipedia an-chors are utilized to align the embeddings of entities and words in the same space. Large scale experiments on Freebase and a Wikipedia/NY Times corpus show that jointly embedding brings promising improvement in the accuracy of predicting facts, compared to separately embedding knowledge graphs and text. Particularly, jointly embedding enables th...
Knowledge bases are typically incomplete, meaning that they are missing information that we would ex...
Previous knowledge graph embedding approaches usually map entities to representations and utilize sc...
Most of the existing knowledge graph embedding models are supervised methods and largely relying on ...
We examine the embedding approach to reason new relational facts from a large-scale knowledge graph ...
Knowledge Graphs (KGs) have become increasingly popular in the recent years. However, as knowledge c...
Knowledge graph, a typical multi-relational structure, includes large-scale facts of the world, yet ...
Knowledge Graphs (KGs) such as Freebase and YAGO have been widely adopted in a variety of NLP tasks....
Knowledge graph completion aims to perform link prediction between entities. In this paper, we consi...
Knowledge graph completion aims to perform link pre-diction between entities. In this paper, we cons...
With the growing popularity of multi-relational data on the Web, knowledge graphs (KGs) have become...
The task of entity alignment between knowledge graphs aims to find entities in two knowledge graphs ...
In addition to feature-based representations that characterize objects with feature vectors, relatio...
Methods for representing the meaning of words in vector spaces purely using the information distribu...
Knowledge graph embedding represents entities and relations in knowledge graph as low-dimensional, c...
We deal with embedding a large scale knowledge graph com-posed of entities and relations into a cont...
Knowledge bases are typically incomplete, meaning that they are missing information that we would ex...
Previous knowledge graph embedding approaches usually map entities to representations and utilize sc...
Most of the existing knowledge graph embedding models are supervised methods and largely relying on ...
We examine the embedding approach to reason new relational facts from a large-scale knowledge graph ...
Knowledge Graphs (KGs) have become increasingly popular in the recent years. However, as knowledge c...
Knowledge graph, a typical multi-relational structure, includes large-scale facts of the world, yet ...
Knowledge Graphs (KGs) such as Freebase and YAGO have been widely adopted in a variety of NLP tasks....
Knowledge graph completion aims to perform link prediction between entities. In this paper, we consi...
Knowledge graph completion aims to perform link pre-diction between entities. In this paper, we cons...
With the growing popularity of multi-relational data on the Web, knowledge graphs (KGs) have become...
The task of entity alignment between knowledge graphs aims to find entities in two knowledge graphs ...
In addition to feature-based representations that characterize objects with feature vectors, relatio...
Methods for representing the meaning of words in vector spaces purely using the information distribu...
Knowledge graph embedding represents entities and relations in knowledge graph as low-dimensional, c...
We deal with embedding a large scale knowledge graph com-posed of entities and relations into a cont...
Knowledge bases are typically incomplete, meaning that they are missing information that we would ex...
Previous knowledge graph embedding approaches usually map entities to representations and utilize sc...
Most of the existing knowledge graph embedding models are supervised methods and largely relying on ...