The automatic classification of abstract sentences into its main elements (background, objectives, methods, results, conclusions) is a key tool to support scientific database querying, to summarize relevant literature works and to assist in the writing of new abstracts. In this paper, we propose a novel deep learning approach based on a convolutional layer and a bidirectional gated recurrent unit to classify sentences of abstracts. First, the proposed neural network was tested on a publicly available repository containing 20 thousand abstracts from the biomedical domain. Competitive results were achieved, with weight-averaged Precision, Recall and F1-score values around 91%, and an area under the ROC curve (AUC) of 99%, which are higher whe...
The goal of a research paper is to gather and interpret information into writing, and to share your ...
Aim: Given a set of pre-defined medical categories used in Evidence Based Medicine, we aim to automa...
Abstract Aim Given a set of pre-defined medical categories used in Evidence Based Medicine, we aim t...
The automatic classification of abstract sentences into its main elements (background, objectives, m...
The classification of abstract sentences is a valuable tool to support scientific database querying,...
Abstract Background Biomedical literature is expanding rapidly, and tools that help locate informati...
Existing models based on artificial neural networks (ANNs) for sentence classification often do not ...
Background: Biomedical literature is expanding rapidly, and tools that help locate information of in...
Convolutional Neural Networks (CNNs) and pre-trained word embeddings have revolutionized the field o...
This paper introduces research in progress to study the intention of researchers to use academic abs...
Deep Learning Architectures have been achieving state-of-the-art results in many application scenari...
International audienceCategorization of semantic relationships between scientific papers is a key to...
© 2018 Association for Computational Linguistics Prevalent models based on artificial neural network...
Subject categories of scholarly papers generally refer to the knowledge domain(s) to which the paper...
The thesis explores different extensions of Deep Neural Networks in learning underlying natural lang...
The goal of a research paper is to gather and interpret information into writing, and to share your ...
Aim: Given a set of pre-defined medical categories used in Evidence Based Medicine, we aim to automa...
Abstract Aim Given a set of pre-defined medical categories used in Evidence Based Medicine, we aim t...
The automatic classification of abstract sentences into its main elements (background, objectives, m...
The classification of abstract sentences is a valuable tool to support scientific database querying,...
Abstract Background Biomedical literature is expanding rapidly, and tools that help locate informati...
Existing models based on artificial neural networks (ANNs) for sentence classification often do not ...
Background: Biomedical literature is expanding rapidly, and tools that help locate information of in...
Convolutional Neural Networks (CNNs) and pre-trained word embeddings have revolutionized the field o...
This paper introduces research in progress to study the intention of researchers to use academic abs...
Deep Learning Architectures have been achieving state-of-the-art results in many application scenari...
International audienceCategorization of semantic relationships between scientific papers is a key to...
© 2018 Association for Computational Linguistics Prevalent models based on artificial neural network...
Subject categories of scholarly papers generally refer to the knowledge domain(s) to which the paper...
The thesis explores different extensions of Deep Neural Networks in learning underlying natural lang...
The goal of a research paper is to gather and interpret information into writing, and to share your ...
Aim: Given a set of pre-defined medical categories used in Evidence Based Medicine, we aim to automa...
Abstract Aim Given a set of pre-defined medical categories used in Evidence Based Medicine, we aim t...