Abstract Using traditional machine learning approaches, there is no single feature engineering solution for all text mining and learning tasks. Thus, researchers must determine and implement the best feature engineering approach for each text classification task; however, deep learning allows us to skip this step by extracting and learning high-level features automatically from low-level text representations. Convolutional neural networks, a popular type of neural network for deep learning, have been shown to be effective at performing feature extraction and classification for many domains including text. Recently, it was demonstrated that convolutional neural networks can be used to train classifiers from character-level representations of...
This thesis presents two principled approaches to improve the performance of convolutional neural ne...
Text classification is one of the classic tasks in the field of natural language processing. The goa...
This master's thesis investigates how a state-of-the-art (SOTA) deep neural network (NN) model can b...
The dominant approach for many NLP tasks are recurrent neural networks, in particular LSTMs, and con...
This paper introduces an extremely lightweight (with just over around two hundred thousand parameter...
Convolutional neural networks have seen much success in computer vision and natural language process...
Convolutional neural networks have seen much success in computer vision and natural language process...
With the continuous renewal of text classification rules, text classifiers need more powerful genera...
Deep learning has seen a resurgence in the machine learning community in the past decade. Research o...
With the development of modern information science and technology, the number of Internet users cont...
International audienceOptical Character Recognition (OCR) systems have been designed to operate on t...
The goal of text classification is to identify the category to which the text belongs. Text categori...
There is an increasing amount of text data available on the web with multiple topical granularities;...
Abstract: Optical Character Recognition (OCR) has significantly evolved with the rise of deep learni...
DoctorThis thesis proposes scene text recognition algorithms, and these algorithms are applied to th...
This thesis presents two principled approaches to improve the performance of convolutional neural ne...
Text classification is one of the classic tasks in the field of natural language processing. The goa...
This master's thesis investigates how a state-of-the-art (SOTA) deep neural network (NN) model can b...
The dominant approach for many NLP tasks are recurrent neural networks, in particular LSTMs, and con...
This paper introduces an extremely lightweight (with just over around two hundred thousand parameter...
Convolutional neural networks have seen much success in computer vision and natural language process...
Convolutional neural networks have seen much success in computer vision and natural language process...
With the continuous renewal of text classification rules, text classifiers need more powerful genera...
Deep learning has seen a resurgence in the machine learning community in the past decade. Research o...
With the development of modern information science and technology, the number of Internet users cont...
International audienceOptical Character Recognition (OCR) systems have been designed to operate on t...
The goal of text classification is to identify the category to which the text belongs. Text categori...
There is an increasing amount of text data available on the web with multiple topical granularities;...
Abstract: Optical Character Recognition (OCR) has significantly evolved with the rise of deep learni...
DoctorThis thesis proposes scene text recognition algorithms, and these algorithms are applied to th...
This thesis presents two principled approaches to improve the performance of convolutional neural ne...
Text classification is one of the classic tasks in the field of natural language processing. The goa...
This master's thesis investigates how a state-of-the-art (SOTA) deep neural network (NN) model can b...