Supervised deep learning is most commonly applied to difficult problems defined on large and often extensively curated datasets. Here we demonstrate the ability of deep representation learning to address problems of classification and regression from small and poorly formed tabular datasets by encoding input information as abstracted sequences composed of a fixed number of characters per input field. We find that small models have sufficient capacity for approximation of various functions and achieve record classification benchmark accuracy. Such models are shown to form useful embeddings of various input features in their hidden layers, even if the learned task does not explicitly require knowledge of those features. These models are also ...
The success of deep learning-based limit order book forecasting models is highly dependent on the qu...
Deep learning has achieved impressive performance in many domains, such as computer vision and natur...
This master's thesis investigates how a state-of-the-art (SOTA) deep neural network (NN) model can b...
While deep learning has enabled tremendous progress on text and image datasets, its superiority on t...
International audienceWhile deep learning has enabled tremendous progress on text and image datasets...
Machine Learning methods, especially Deep Learning, had an enormous breakthrough in Natural Language...
Tabular data is the foundation of the information age and has been extensively studied. Recent studi...
Recent advances in the field of natural language processing were achieved with deep learning models....
Deep Learning, a growing sub-field of machine learning, has been applied with tremendous success in ...
When scaled to hundreds of billions of parameters, pretrained language models such as GPT-3 (Brown e...
Recent deep learning models for tabular data currently compete with the traditional ML models based ...
This study discusses the effect of semi-supervised learning in combination with pretrained language ...
State-of-the-art pre-trained language models have been shown to memorise facts and per- form well wi...
Through their transfer learning abilities, highly-parameterized large pre-trained language models ha...
Heterogeneous tabular data are the most commonly used form of data and are essential for numerous cr...
The success of deep learning-based limit order book forecasting models is highly dependent on the qu...
Deep learning has achieved impressive performance in many domains, such as computer vision and natur...
This master's thesis investigates how a state-of-the-art (SOTA) deep neural network (NN) model can b...
While deep learning has enabled tremendous progress on text and image datasets, its superiority on t...
International audienceWhile deep learning has enabled tremendous progress on text and image datasets...
Machine Learning methods, especially Deep Learning, had an enormous breakthrough in Natural Language...
Tabular data is the foundation of the information age and has been extensively studied. Recent studi...
Recent advances in the field of natural language processing were achieved with deep learning models....
Deep Learning, a growing sub-field of machine learning, has been applied with tremendous success in ...
When scaled to hundreds of billions of parameters, pretrained language models such as GPT-3 (Brown e...
Recent deep learning models for tabular data currently compete with the traditional ML models based ...
This study discusses the effect of semi-supervised learning in combination with pretrained language ...
State-of-the-art pre-trained language models have been shown to memorise facts and per- form well wi...
Through their transfer learning abilities, highly-parameterized large pre-trained language models ha...
Heterogeneous tabular data are the most commonly used form of data and are essential for numerous cr...
The success of deep learning-based limit order book forecasting models is highly dependent on the qu...
Deep learning has achieved impressive performance in many domains, such as computer vision and natur...
This master's thesis investigates how a state-of-the-art (SOTA) deep neural network (NN) model can b...