Extracting relational triples from unstructured text is an essential task in natural language processing and knowledge graph construction. Existing approaches usually contain two fundamental steps: (1) finding the boundary positions of head and tail entities; (2) concatenating specific tokens to form triples. However, nearly all previous methods suffer from the problem of error accumulation, i.e., the boundary recognition error of each entity in step (1) will be accumulated into the final combined triples. To solve the problem, in this paper, we introduce a fresh perspective to revisit the triple extraction task, and propose a simple but effective model, named DirectRel. Specifically, the proposed model first generates candidate entities th...
In this paper, we describe an end-to-end system that automatically extracts RDF triples describing e...
Querying both structured and unstructured data via a single common query interface such as SQL or na...
Recognizing textual entailment and paraphrasing is critical to many core natural language processing...
Current supervised relational triple extraction approaches require huge amounts of labeled data and ...
Recent works on relational triple extraction have shown the superiority of jointly extracting entiti...
Joint entity and relation extraction is an essential task in natural language processing and knowled...
The relational triple extraction is a fundamental and essential information extraction task. The exi...
Joint extraction of entities and relations is an important task in natural language processing (NLP)...
The web contains vast repositories of unstructured text. We investigate the opportunity for building...
There has been recent research in open-ended information extraction from text that finds relational ...
A relation extraction system recognises pre-defined relation types between two identified entities f...
The web contains vast repositories of unstructured text. We investigate the opportunity for building...
Triplets extraction is an essential and pivotal step in automatic knowledge base construction, which...
The relation triples extraction method based on table filling can address the issues of relation ove...
Document-level relation extraction aims to extract relations among multiple entity pairs from a docu...
In this paper, we describe an end-to-end system that automatically extracts RDF triples describing e...
Querying both structured and unstructured data via a single common query interface such as SQL or na...
Recognizing textual entailment and paraphrasing is critical to many core natural language processing...
Current supervised relational triple extraction approaches require huge amounts of labeled data and ...
Recent works on relational triple extraction have shown the superiority of jointly extracting entiti...
Joint entity and relation extraction is an essential task in natural language processing and knowled...
The relational triple extraction is a fundamental and essential information extraction task. The exi...
Joint extraction of entities and relations is an important task in natural language processing (NLP)...
The web contains vast repositories of unstructured text. We investigate the opportunity for building...
There has been recent research in open-ended information extraction from text that finds relational ...
A relation extraction system recognises pre-defined relation types between two identified entities f...
The web contains vast repositories of unstructured text. We investigate the opportunity for building...
Triplets extraction is an essential and pivotal step in automatic knowledge base construction, which...
The relation triples extraction method based on table filling can address the issues of relation ove...
Document-level relation extraction aims to extract relations among multiple entity pairs from a docu...
In this paper, we describe an end-to-end system that automatically extracts RDF triples describing e...
Querying both structured and unstructured data via a single common query interface such as SQL or na...
Recognizing textual entailment and paraphrasing is critical to many core natural language processing...