Hyperparameter optimization of a neural network is a nontrivial task. It is time-consuming to evaluate a hyperparameter setting, no analytical expression of the impact of the hyperparameters are available, and the evaluations are noisy in the sense that the result is dependent on the training process and weight initialization. Bayesian optimization is a powerful tool to handle these problems. However, hyperparameter optimization of neural networks poses additional challenges, since the hyperparameters can be integer-valued, categorical, and/or conditional, whereas Bayesian optimization often assumes variables to be real-valued. In this paper we present an architecture-aware transformation of neural networks applied in the kernel of a Gaussi...
Multilayer Perceptrons, Recurrent neural networks, Convolutional networks, and others types of neur...
Neuromorphic systems promise a novel alternative to the standard von-Neumann architectures that are ...
The solution to many science and engineering problems includes identifying the minimum or maximum of...
The goal of this thesis was to implement a practical tool for optimizing hy- perparameters of neural...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
Advances in machine learning have had, and continue to have, a profound effect on scientific researc...
This thesis addresses many open challenges in hyperparameter tuning of machine learning algorithms. ...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
Tuning hyperparameters of machine learning models is important for their performance. Bayesian optim...
National audience<p>One common problem in building deep learning architectures is the choice of the ...
Hyperparameters play a crucial role in the model selection of machine learning algorithms. Tuning th...
Deep learning techniques play an increasingly important role in industrial and research environments...
Most machine learning methods require careful selection of hyper-parameters in order to train a high...
The solution to many science and engineering problems includes identifying the minimum or maximum of...
Multilayer Perceptrons, Recurrent neural networks, Convolutional networks, and others types of neur...
Neuromorphic systems promise a novel alternative to the standard von-Neumann architectures that are ...
The solution to many science and engineering problems includes identifying the minimum or maximum of...
The goal of this thesis was to implement a practical tool for optimizing hy- perparameters of neural...
Deep neural networks have recently become astonishingly successful at many machine learning problems...
Advances in machine learning have had, and continue to have, a profound effect on scientific researc...
This thesis addresses many open challenges in hyperparameter tuning of machine learning algorithms. ...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
The use of machine learning algorithms frequently involves careful tuning of learning parameters and...
Tuning hyperparameters of machine learning models is important for their performance. Bayesian optim...
National audience<p>One common problem in building deep learning architectures is the choice of the ...
Hyperparameters play a crucial role in the model selection of machine learning algorithms. Tuning th...
Deep learning techniques play an increasingly important role in industrial and research environments...
Most machine learning methods require careful selection of hyper-parameters in order to train a high...
The solution to many science and engineering problems includes identifying the minimum or maximum of...
Multilayer Perceptrons, Recurrent neural networks, Convolutional networks, and others types of neur...
Neuromorphic systems promise a novel alternative to the standard von-Neumann architectures that are ...
The solution to many science and engineering problems includes identifying the minimum or maximum of...