The application of deep learning models to increasingly complex contexts has led to a rise in the complexity of the models themselves. Due to this, there is an increase in the number of hyper-parameters (HPs) to be set and Hyper-Parameter Optimization (HPO) algorithms occupy a fundamental role in deep learning. Bayesian Optimization (BO) is the state-of-the-art of HPO for deep learning models. BO keeps track of past results and uses them to build a probabilistic model, building a probability density of HPs. This work aims to improve BO applied to Deep Neural Networks (DNNs) by an analysis of the results of the network on training and validation sets. This analysis is obtained by applying symbolic tuning rules, implemented in Probabilistic L...
Overfitting is one issue that deep learning faces in particular. It leads to highly accurate classif...
© 2019, Springer Nature Switzerland AG. In the last few years, we have witnessed a resurgence of int...
Neural networks have emerged as a powerful and versatile class of machine learning models, revolutio...
Deep learning techniques play an increasingly important role in industrial and research environments...
Deep neural networks (DNNs) have successfully been applied across various data intensive application...
National audience<p>One common problem in building deep learning architectures is the choice of the ...
In this thesis, Gaussian Process based Bayesian Optimization (BO) is applied to Deep Reinforcement L...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
Hyperparameter optimization of a neural network is a nontrivial task. It is time-consuming to evalua...
Deep Neural Networks have advanced rapidly over the past several years. However, it still seems like...
Deep neural networks (DNNs) are very dependent on their parameterization and require experts to dete...
International audienceSeveral recent advances to the state of the art in image classification benchm...
Several recent advances to the state of the art in image classification benchmarks have come from be...
The goal of this thesis was to implement a practical tool for optimizing hy- perparameters of neural...
peer reviewedLearning non use-case specific models has been shown to be a challenging task in Deep L...
Overfitting is one issue that deep learning faces in particular. It leads to highly accurate classif...
© 2019, Springer Nature Switzerland AG. In the last few years, we have witnessed a resurgence of int...
Neural networks have emerged as a powerful and versatile class of machine learning models, revolutio...
Deep learning techniques play an increasingly important role in industrial and research environments...
Deep neural networks (DNNs) have successfully been applied across various data intensive application...
National audience<p>One common problem in building deep learning architectures is the choice of the ...
In this thesis, Gaussian Process based Bayesian Optimization (BO) is applied to Deep Reinforcement L...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
Hyperparameter optimization of a neural network is a nontrivial task. It is time-consuming to evalua...
Deep Neural Networks have advanced rapidly over the past several years. However, it still seems like...
Deep neural networks (DNNs) are very dependent on their parameterization and require experts to dete...
International audienceSeveral recent advances to the state of the art in image classification benchm...
Several recent advances to the state of the art in image classification benchmarks have come from be...
The goal of this thesis was to implement a practical tool for optimizing hy- perparameters of neural...
peer reviewedLearning non use-case specific models has been shown to be a challenging task in Deep L...
Overfitting is one issue that deep learning faces in particular. It leads to highly accurate classif...
© 2019, Springer Nature Switzerland AG. In the last few years, we have witnessed a resurgence of int...
Neural networks have emerged as a powerful and versatile class of machine learning models, revolutio...