The aim of knowledge base completion is to predict unseen facts from existing facts in knowledge bases. In this work, we introduce the first approach for transfer of knowledge from one collection of facts to another without the need for entity or relation matching. The method works for both canonicalized knowledge bases and uncanonicalized or open knowledge bases, i.e., knowledge bases where more than one copy of a real-world entity or relation may exist. Such knowledge bases are a natural output of automated information extraction tools that extract structured data from unstructured text. Our main contribution is a method that can make use of a large-scale pretraining on facts, collected from unstructured text, to improve predictions on st...
Knowledge Base (KB) systems have been studied for decades. Various approaches have been explore...
Abstract — Knowledge bases are an important resource for easily accessible, systematic relational kn...
Ontology plays a critical role in knowledge engineering and knowledge graphs (KGs). However, buildin...
Over the past few years, many large Knowledge Bases (KBs) have been constructed through relation ext...
Pre-trained language models (LMs) have advanced the state-of-the-art for many semantic tasks and hav...
International audienceKnowledge bases are increasingly exploited as gold standard data sources which...
Transfer learning aims to solve new learning problems by extracting and making use of the common kno...
Large-scale knowledge bases, as the foundations for promoting the development of artificial intellig...
Populating Knowledge Base (KB) with new knowledge facts from reliable text resources usually consist...
With the development of Semantic Web, the automatic construction of large scale knowledge bases (KBs...
Knowledge graph embedding models have recently received significant attention in the literature. The...
Most of previous work in knowledge base (KB) completion has focused on the problem of relation extra...
We consider a joint information extraction(IE) model, solving named entity recognition, coreference ...
In this paper, we propose a fully automated system to extend knowledge graphs using external informa...
Abstract. Knowledge transfer from multiple source domains to a target domain is crucial in transfer ...
Knowledge Base (KB) systems have been studied for decades. Various approaches have been explore...
Abstract — Knowledge bases are an important resource for easily accessible, systematic relational kn...
Ontology plays a critical role in knowledge engineering and knowledge graphs (KGs). However, buildin...
Over the past few years, many large Knowledge Bases (KBs) have been constructed through relation ext...
Pre-trained language models (LMs) have advanced the state-of-the-art for many semantic tasks and hav...
International audienceKnowledge bases are increasingly exploited as gold standard data sources which...
Transfer learning aims to solve new learning problems by extracting and making use of the common kno...
Large-scale knowledge bases, as the foundations for promoting the development of artificial intellig...
Populating Knowledge Base (KB) with new knowledge facts from reliable text resources usually consist...
With the development of Semantic Web, the automatic construction of large scale knowledge bases (KBs...
Knowledge graph embedding models have recently received significant attention in the literature. The...
Most of previous work in knowledge base (KB) completion has focused on the problem of relation extra...
We consider a joint information extraction(IE) model, solving named entity recognition, coreference ...
In this paper, we propose a fully automated system to extend knowledge graphs using external informa...
Abstract. Knowledge transfer from multiple source domains to a target domain is crucial in transfer ...
Knowledge Base (KB) systems have been studied for decades. Various approaches have been explore...
Abstract — Knowledge bases are an important resource for easily accessible, systematic relational kn...
Ontology plays a critical role in knowledge engineering and knowledge graphs (KGs). However, buildin...