Large-scale knowledge graphs, such as DBpedia, Wikidata, or YAGO, can be enhanced by relation extraction from text, using the data in the knowledge graph as training data, i.e., using distant supervision. While most existing approaches use language-specific methods (usually for English), we present a language-agnostic approach that exploits background knowledge from the graph instead of language-specific techniques and builds machine learning models only from language-independent features. We demonstrate the extraction of relations from Wikipedia abstracts, using the twelve largest language editions of Wikipedia. From those, we can extract 1.6 M new relations in DBpedia at a level of precision of 95%, using a RandomForest classifier trained...
International audienceDuring the last decade, the need for reliable and massive Knowledge Graphs (KG...
Popular cross-domain knowledge graphs, such as DBpedia and YAGO, are built from Wikipedia, and there...
Popular cross-domain knowledge graphs, such as DBpedia and YAGO, are built from Wikipedia, and there...
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...
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...
Recent years have seen a significant growth and increased usage of large-scale knowledge resources i...
Abstract. The exponential growth of Wikipedia recently attracts the attention of a large number of r...
Natural language text, from messages on social media to articles in newspapers, constitutes a signif...
In this paper, we propose a fully automated system to extend knowledge graphs using external informa...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
International audienceDuring the last decade, the need for reliable and massive Knowledge Graphs (KG...
International audienceDuring the last decade, the need for reliable and massive Knowledge Graphs (KG...
International audienceDuring the last decade, the need for reliable and massive Knowledge Graphs (KG...
Popular cross-domain knowledge graphs, such as DBpedia and YAGO, are built from Wikipedia, and there...
Popular cross-domain knowledge graphs, such as DBpedia and YAGO, are built from Wikipedia, and there...
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...
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...
Recent years have seen a significant growth and increased usage of large-scale knowledge resources i...
Abstract. The exponential growth of Wikipedia recently attracts the attention of a large number of r...
Natural language text, from messages on social media to articles in newspapers, constitutes a signif...
In this paper, we propose a fully automated system to extend knowledge graphs using external informa...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
This paper proposes the automatic acquisition of binary relational patterns (i.e. portions of text e...
International audienceDuring the last decade, the need for reliable and massive Knowledge Graphs (KG...
International audienceDuring the last decade, the need for reliable and massive Knowledge Graphs (KG...
International audienceDuring the last decade, the need for reliable and massive Knowledge Graphs (KG...
Popular cross-domain knowledge graphs, such as DBpedia and YAGO, are built from Wikipedia, and there...
Popular cross-domain knowledge graphs, such as DBpedia and YAGO, are built from Wikipedia, and there...