The dominant approach for many NLP tasks are recurrent neural networks, in particular LSTMs, and convolutional neural networks. However, these architectures are rather shallow in comparison to the deep convolutional networks which have pushed the state-of-the-art in computer vision. We present a new architecture (VDCNN) for text processing which operates directly at the character level and uses only small convolutions and pooling operations. We are able to show that the performance of this model increases with the depth: using up to 29 convolutional layers, we report improvements over the state-of-the-art on several public text classification tasks. To the best of our knowledge, this is the first time that very deep convolutional nets have ...
Text classification is a foundational task in many NLP applications. Traditional text classifiers of...
Financiado para publicación en acceso aberto: Universidade de Vigo/CISUGNowadays, trends in deep lea...
This thesis presents a new methodology for text analysis which is situated at the intersection of te...
Abstract Using traditional machine learning approaches, there is no single feature engineering solut...
The evolution of the social media and the e-commerce sites produces a massive amount of unstructured...
Densely connected convolutional neural networks are currently one of the best object recognition alg...
Text classification is one of the classic tasks in the field of natural language processing. The goa...
The thesis explores different extensions of Deep Neural Networks in learning underlying natural lang...
Convolutional neural networks have seen much success in computer vision and natural language process...
Text classification is a foundational task in many NLP applications. Traditional text classifiers of...
Convolutional neural networks have seen much success in computer vision and natural language process...
This master's thesis investigates how a state-of-the-art (SOTA) deep neural network (NN) model can b...
There is an increasing amount of text data available on the web with multiple topical granularities;...
Text classification is a fundamental task in several areas of natural language processing (NLP), inc...
Deep Learning Architectures have been achieving state-of-the-art results in many application scenari...
Text classification is a foundational task in many NLP applications. Traditional text classifiers of...
Financiado para publicación en acceso aberto: Universidade de Vigo/CISUGNowadays, trends in deep lea...
This thesis presents a new methodology for text analysis which is situated at the intersection of te...
Abstract Using traditional machine learning approaches, there is no single feature engineering solut...
The evolution of the social media and the e-commerce sites produces a massive amount of unstructured...
Densely connected convolutional neural networks are currently one of the best object recognition alg...
Text classification is one of the classic tasks in the field of natural language processing. The goa...
The thesis explores different extensions of Deep Neural Networks in learning underlying natural lang...
Convolutional neural networks have seen much success in computer vision and natural language process...
Text classification is a foundational task in many NLP applications. Traditional text classifiers of...
Convolutional neural networks have seen much success in computer vision and natural language process...
This master's thesis investigates how a state-of-the-art (SOTA) deep neural network (NN) model can b...
There is an increasing amount of text data available on the web with multiple topical granularities;...
Text classification is a fundamental task in several areas of natural language processing (NLP), inc...
Deep Learning Architectures have been achieving state-of-the-art results in many application scenari...
Text classification is a foundational task in many NLP applications. Traditional text classifiers of...
Financiado para publicación en acceso aberto: Universidade de Vigo/CISUGNowadays, trends in deep lea...
This thesis presents a new methodology for text analysis which is situated at the intersection of te...