Event extraction plays an important role in natural language processing (NLP) applications including question answering and information retrieval. Traditional event extraction relies heavily on lexical and syntactic features, which require intensive human engineering and may not generalize to different datasets. Deep neural networks, on the other hand, are able to automatically learn underlying features, but existing networks do not make full use of syntactic relations. In this paper, we propose a novel dependency bridge recurrent neural network (dbRNN) for event extraction. We build our model upon a recurrent neural network, but enhance it with dependency bridges, which carry syntactically related information when modeling each word.We il...
Eliciting knowledge from pre-trained language models via prompt-based learning has shown great poten...
Extracting entities and relations, as a crucial part of many tasks in natural language processing, t...
This thesis presents and investigates a dependency-based recursive neural network model applied to t...
Graduation date:2017Automatic event extraction from natural text is an important and challenging tas...
Event and relation extraction are central tasks in biomedical text mining. Where relation extraction...
The current neural network models for event detection have only considered the sequential representa...
International audienceMost existing systems for identifying temporal relations between events heavil...
Medical reports include many occurrences of relevant events in the form of free-text. To make data e...
Recurrent Neural Networks (RNNs) have been widely used in processing natural language tasks and achi...
Causal relations play a key role in information extraction and reasoning. Most of the times, their e...
Recurrent neural networks (RNN) combined with attention mechanism has proved to be useful for variou...
Dependency analysis can assist neural networks to capture semantic features within a sentence for en...
Past work in relation extraction mostly focuses on binary relation between entity pairs within singl...
Recent work on language modelling has shifted focus from count-based models to neural models. In the...
Abstract The area of story content generation has been widely explored in the field of natural langua...
Eliciting knowledge from pre-trained language models via prompt-based learning has shown great poten...
Extracting entities and relations, as a crucial part of many tasks in natural language processing, t...
This thesis presents and investigates a dependency-based recursive neural network model applied to t...
Graduation date:2017Automatic event extraction from natural text is an important and challenging tas...
Event and relation extraction are central tasks in biomedical text mining. Where relation extraction...
The current neural network models for event detection have only considered the sequential representa...
International audienceMost existing systems for identifying temporal relations between events heavil...
Medical reports include many occurrences of relevant events in the form of free-text. To make data e...
Recurrent Neural Networks (RNNs) have been widely used in processing natural language tasks and achi...
Causal relations play a key role in information extraction and reasoning. Most of the times, their e...
Recurrent neural networks (RNN) combined with attention mechanism has proved to be useful for variou...
Dependency analysis can assist neural networks to capture semantic features within a sentence for en...
Past work in relation extraction mostly focuses on binary relation between entity pairs within singl...
Recent work on language modelling has shifted focus from count-based models to neural models. In the...
Abstract The area of story content generation has been widely explored in the field of natural langua...
Eliciting knowledge from pre-trained language models via prompt-based learning has shown great poten...
Extracting entities and relations, as a crucial part of many tasks in natural language processing, t...
This thesis presents and investigates a dependency-based recursive neural network model applied to t...