Joint entity and relation extraction is to detect entity and relation using a single model. In this paper, we present a novel unified joint extraction model which directly tags entity and relation labels according to a query word position p, i.e., detecting entity at p, and identifying entities at other positions that have relationship with the former. To this end, we first design a tagging scheme to generate n tag sequences for an n-word sentence. Then a position-attention mechanism is introduced to produce different sentence representations for every query position to model these n tag sequences. In this way, our method can simultaneously extract all entities and their type, as well as all overlapping relations. Experiment results show th...
Sequence generation demonstrates promising performance in recent information extraction efforts, by ...
Although joint inference is an effective approach to avoid cascad-ing of errors when inferring multi...
Entities and relations extraction is one of the key task to build medical knowledge graph, which is ...
Joint extraction of entities and relations is an important task in natural language processing (NLP)...
Joint extraction of entities and relations focuses on detecting entity pairs and their relations sim...
Previous work for relation extraction from free text is mainly based on intra-sentence information. ...
A relation tuple consists of two entities and the relation between them, and often such tuples are f...
In recent years, overlapping entity relation extraction has received a great deal of attention and h...
State-of-the-art models for joint entity recognition and relation extraction strongly rely on extern...
Distantly-supervised relation extraction has proven to be effective to find relational facts from te...
Joint entity and relation extraction is an essential task in natural language processing and knowled...
The main purpose of the joint entity and relation extraction is to extract entities from unstructure...
Both entity and relation extraction can benefit from being performed jointly, al-lowing each task to...
To disclose overlapped multiple relations from a sentence still keeps challenging. Most current work...
Although joint inference is an effective approach to avoid cascad-ing of errors when inferring multi...
Sequence generation demonstrates promising performance in recent information extraction efforts, by ...
Although joint inference is an effective approach to avoid cascad-ing of errors when inferring multi...
Entities and relations extraction is one of the key task to build medical knowledge graph, which is ...
Joint extraction of entities and relations is an important task in natural language processing (NLP)...
Joint extraction of entities and relations focuses on detecting entity pairs and their relations sim...
Previous work for relation extraction from free text is mainly based on intra-sentence information. ...
A relation tuple consists of two entities and the relation between them, and often such tuples are f...
In recent years, overlapping entity relation extraction has received a great deal of attention and h...
State-of-the-art models for joint entity recognition and relation extraction strongly rely on extern...
Distantly-supervised relation extraction has proven to be effective to find relational facts from te...
Joint entity and relation extraction is an essential task in natural language processing and knowled...
The main purpose of the joint entity and relation extraction is to extract entities from unstructure...
Both entity and relation extraction can benefit from being performed jointly, al-lowing each task to...
To disclose overlapped multiple relations from a sentence still keeps challenging. Most current work...
Although joint inference is an effective approach to avoid cascad-ing of errors when inferring multi...
Sequence generation demonstrates promising performance in recent information extraction efforts, by ...
Although joint inference is an effective approach to avoid cascad-ing of errors when inferring multi...
Entities and relations extraction is one of the key task to build medical knowledge graph, which is ...