<p>Automatically constructed Knowledge Bases (KBs) are often incomplete and there is a genuine need to improve their coverage. Path Ranking Algorithm (PRA) is a recently proposed method which aims to improve KB coverage by performing inference directly over the KB graph. For the first time, we demonstrate that addition of edges labeled with latent features mined from a large dependency parsed corpus of 500 million Web documents can significantly outperform previous PRA-based approaches on the KB inference task. We present extensive experimental results validating this finding. The resources presented in this paper are publicly available.</p
Automatic KB completion for commonsense knowledge graphs (e.g., ATOMIC and ConceptNet) poses unique ...
<p>We study how to extend a large knowledge base (Freebase) by reading relational information from a...
We focus on the problem of predicting missing links in large Knowledge Graphs (KGs), so to discover ...
Automatically constructed Knowledge Bases (KBs) are often incomplete and there is a genuine need to ...
Automatically constructed Knowledge Bases (KBs) are often incomplete and there is a gen-uine need to...
Large-scale Knowledge Bases (such as NELL, Yago, Freebase, etc.) are often sparse, i.e., a large num...
Large-scale knowledge bases, as the foundations for promoting the development of artificial intellig...
We consider the problem of performing learning and inference in a large scale knowledge base contain...
We explore some of the practicalities of using random walk inference meth-ods, such as the Path Rank...
Much work in recent years has gone into the construction of large knowledge bases (KBs), such as Fre...
Much work in recent years has gone into the construction of large knowledge bases (KBs), such as Fre...
Much work in recent years has gone into the construction of large knowledge bases (KBs), such as Fre...
The objective of the knowledge base completion problem is to infer missing information from existing...
Knowledge bases are useful in the validation of automatically extracted information, and for hypothe...
Graph feature models facilitate efficient and interpretable predictions of missing links in knowledg...
Automatic KB completion for commonsense knowledge graphs (e.g., ATOMIC and ConceptNet) poses unique ...
<p>We study how to extend a large knowledge base (Freebase) by reading relational information from a...
We focus on the problem of predicting missing links in large Knowledge Graphs (KGs), so to discover ...
Automatically constructed Knowledge Bases (KBs) are often incomplete and there is a genuine need to ...
Automatically constructed Knowledge Bases (KBs) are often incomplete and there is a gen-uine need to...
Large-scale Knowledge Bases (such as NELL, Yago, Freebase, etc.) are often sparse, i.e., a large num...
Large-scale knowledge bases, as the foundations for promoting the development of artificial intellig...
We consider the problem of performing learning and inference in a large scale knowledge base contain...
We explore some of the practicalities of using random walk inference meth-ods, such as the Path Rank...
Much work in recent years has gone into the construction of large knowledge bases (KBs), such as Fre...
Much work in recent years has gone into the construction of large knowledge bases (KBs), such as Fre...
Much work in recent years has gone into the construction of large knowledge bases (KBs), such as Fre...
The objective of the knowledge base completion problem is to infer missing information from existing...
Knowledge bases are useful in the validation of automatically extracted information, and for hypothe...
Graph feature models facilitate efficient and interpretable predictions of missing links in knowledg...
Automatic KB completion for commonsense knowledge graphs (e.g., ATOMIC and ConceptNet) poses unique ...
<p>We study how to extend a large knowledge base (Freebase) by reading relational information from a...
We focus on the problem of predicting missing links in large Knowledge Graphs (KGs), so to discover ...