Many approaches to solving tasks in the field of Natural Language Processing (NLP) use syntactic dependency trees (SDTs) as a feature to represent the latent nonlinear structure within sentences. Recently, work in parsing sentences to graph-based structures which encode semantic relationships between words—called semantic dependency graphs (SDGs)—has gained interest. This thesis seeks to explore the use of SDGs in place of and alongside SDTs within a relation classification system based on long short-term memory (LSTM) neural networks. Two methods for handling the information in these graphs are presented and compared between two SDG formalisms. Three new relation extraction system architectures have been created based on these methods and ...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Many approaches to solving tasks in the field of Natural Language Processing (NLP) use syntactic dep...
Many approaches to solving tasks in the field of Natural Language Processing (NLP) use syntactic dep...
Relation classification is an important re-search arena in the field of natural lan-guage processing...
Dependency analysis can assist neural networks to capture semantic features within a sentence for en...
Abstract Background Extracting relations between important clinical entities is critical but very ch...
The surge in information in the form of textual data demands automated systems to extract structured...
Relation classification is an important se-mantic processing, which has achieved great attention in ...
Previous research on relation classification has verified the effectiveness of using de-pendency sho...
A large majority of approaches have been proposed to leverage the dependency tree in the relation cl...
Previous research on relation classification has verified the effectiveness of using dependency shor...
The speech of native speakers is full of idiosyncrasies. Especially prominent are lexically restrict...
International audienceDeep Learning is more and more used in NLP tasks, such as in relation classifi...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Many approaches to solving tasks in the field of Natural Language Processing (NLP) use syntactic dep...
Many approaches to solving tasks in the field of Natural Language Processing (NLP) use syntactic dep...
Relation classification is an important re-search arena in the field of natural lan-guage processing...
Dependency analysis can assist neural networks to capture semantic features within a sentence for en...
Abstract Background Extracting relations between important clinical entities is critical but very ch...
The surge in information in the form of textual data demands automated systems to extract structured...
Relation classification is an important se-mantic processing, which has achieved great attention in ...
Previous research on relation classification has verified the effectiveness of using de-pendency sho...
A large majority of approaches have been proposed to leverage the dependency tree in the relation cl...
Previous research on relation classification has verified the effectiveness of using dependency shor...
The speech of native speakers is full of idiosyncrasies. Especially prominent are lexically restrict...
International audienceDeep Learning is more and more used in NLP tasks, such as in relation classifi...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...
Semantic dependency parsing is the task of mapping natural language sentences into representations o...