Relation extraction task is a crucial and challenging aspect of Natural Language Processing. Several methods have surfaced as of late, exhibiting notable performance in addressing the task; however, most of these approaches rely on vast amounts of data from large-scale knowledge graphs or language models pretrained on voluminous corpora. In this paper, we hone in on the effective utilization of solely the knowledge supplied by a corpus to create a high-performing model. Our objective is to showcase that by leveraging the hierarchical structure and relational distribution of entities within a corpus without introducing external knowledge, a relation extraction model can achieve significantly enhanced performance. We therefore proposed a rela...
Large-scale knowledge graphs, such as DBpedia, Wikidata, or YAGO, can be enhanced by relation extrac...
Large-scale knowledge graphs, such as DBpedia, Wikidata, or YAGO, can be enhanced by relation extrac...
In this thesis, we study the importance of background knowledge in relation extraction systems. We n...
We present a novel method for relation extraction (RE) from a single sentence, mapping the sentence ...
International audienceDuring the last decade, the need for reliable and massive Knowledge Graphs (KG...
Knowledge Graphs capture entities and their relationships. However, many knowledge graphs are afflic...
Relational graph neural networks have garnered particular attention to encode graph context in knowl...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
In this paper, we propose a fully automated system to extend knowledge graphs using external informa...
Knowledge bases, and their representations in the form of knowledge graphs (KGs), are naturally inco...
International audienceKnowledge Graphs (KG) offer easy-to-process information. An important issue to...
Knowledge Base (KB) systems have been studied for decades. Various approaches have been explore...
In this chapter, we discuss approaches leveraging distant supervision for relation extraction. We s...
Knowledge Base Population (KBP) is an important and challenging task specially when it has to be don...
We consider the task of knowledge graph link prediction. Given a question consisting of a source ent...
Large-scale knowledge graphs, such as DBpedia, Wikidata, or YAGO, can be enhanced by relation extrac...
Large-scale knowledge graphs, such as DBpedia, Wikidata, or YAGO, can be enhanced by relation extrac...
In this thesis, we study the importance of background knowledge in relation extraction systems. We n...
We present a novel method for relation extraction (RE) from a single sentence, mapping the sentence ...
International audienceDuring the last decade, the need for reliable and massive Knowledge Graphs (KG...
Knowledge Graphs capture entities and their relationships. However, many knowledge graphs are afflic...
Relational graph neural networks have garnered particular attention to encode graph context in knowl...
Human communication is inevitably grounded in the real world. Existing work on natural language proc...
In this paper, we propose a fully automated system to extend knowledge graphs using external informa...
Knowledge bases, and their representations in the form of knowledge graphs (KGs), are naturally inco...
International audienceKnowledge Graphs (KG) offer easy-to-process information. An important issue to...
Knowledge Base (KB) systems have been studied for decades. Various approaches have been explore...
In this chapter, we discuss approaches leveraging distant supervision for relation extraction. We s...
Knowledge Base Population (KBP) is an important and challenging task specially when it has to be don...
We consider the task of knowledge graph link prediction. Given a question consisting of a source ent...
Large-scale knowledge graphs, such as DBpedia, Wikidata, or YAGO, can be enhanced by relation extrac...
Large-scale knowledge graphs, such as DBpedia, Wikidata, or YAGO, can be enhanced by relation extrac...
In this thesis, we study the importance of background knowledge in relation extraction systems. We n...