International audienceDeep Learning is more and more used in NLP tasks, such as in relation classification of texts. This paper assesses the impact of syntactic dependencies in this task at two levels. The first level concerns the generic Word Embedding (WE) as input of the classification model, the second level concerns the corpus whose relations have to be classified. In this paper, two classification models are studied, the first one is based on a CNN using a generic WE and does not take into account the dependencies of the corpus to be treated, and the second one is based on a compositional WE combining a generic WE with syntactical annotations of this corpus to classify. The impact of dependencies in relation classification is estimate...
We consider the task of KBP slot filling – extracting relation information from newswire documents f...
This thesis aims to implement relation identification between entities in one sentence, which is a ...
International audienceKnowledge Graphs (KG) offer easy-to-process information. An important issue to...
International audienceDeep Learning is more and more used in NLP tasks, such as in relation classifi...
The surge in information in the form of textual data demands automated systems to extract structured...
The speech of native speakers is full of idiosyncrasies. Especially prominent are lexically restrict...
Many approaches to solving tasks in the field of Natural Language Processing (NLP) use syntactic dep...
Semantic pairs, which consist of related entities or concepts, serve as the foundation for comprehen...
Dependency analysis can assist neural networks to capture semantic features within a sentence for en...
ABSTRACT Recent works showed the trend of leveraging web-scaled structured semantic knowledge resour...
We present a method for dependency grammar induction that utilizes sparse annotations of semantic re...
The relevance of syntactic dependency annotated corpora is nowadays unquestioned. However, a broad d...
Recent work has demonstrated the positive impact of incorporating linguistic representations as addi...
Relation extraction is the task of extracting relation between named entities from natural language ...
Deep neural network has adequately revealed its superiority of solving various tasks in Natural Lang...
We consider the task of KBP slot filling – extracting relation information from newswire documents f...
This thesis aims to implement relation identification between entities in one sentence, which is a ...
International audienceKnowledge Graphs (KG) offer easy-to-process information. An important issue to...
International audienceDeep Learning is more and more used in NLP tasks, such as in relation classifi...
The surge in information in the form of textual data demands automated systems to extract structured...
The speech of native speakers is full of idiosyncrasies. Especially prominent are lexically restrict...
Many approaches to solving tasks in the field of Natural Language Processing (NLP) use syntactic dep...
Semantic pairs, which consist of related entities or concepts, serve as the foundation for comprehen...
Dependency analysis can assist neural networks to capture semantic features within a sentence for en...
ABSTRACT Recent works showed the trend of leveraging web-scaled structured semantic knowledge resour...
We present a method for dependency grammar induction that utilizes sparse annotations of semantic re...
The relevance of syntactic dependency annotated corpora is nowadays unquestioned. However, a broad d...
Recent work has demonstrated the positive impact of incorporating linguistic representations as addi...
Relation extraction is the task of extracting relation between named entities from natural language ...
Deep neural network has adequately revealed its superiority of solving various tasks in Natural Lang...
We consider the task of KBP slot filling – extracting relation information from newswire documents f...
This thesis aims to implement relation identification between entities in one sentence, which is a ...
International audienceKnowledge Graphs (KG) offer easy-to-process information. An important issue to...