Multilayer Perceptrons, Recurrent neural networks, Convolutional networks, and others types of neural networks are widespread nowadays. Neural Networks have hyperparameters like number of hidden layers, number of units for each hidden layer, learning rate, and activation function. Bayesian Optimization is one of the methods used for tuning hyperparameters. Usually this technique treats values of neurons in net- work as stochastic Gaussian processes. This article reports experimental results on multivariate normality test and proves that the neuron vectors are considerably far from Gaussian distribution
textA primary goal in systems neuroscience is to understand how neural spike responses encode inform...
Bayesian techniques have been developed over many years in a range of different fields, but have onl...
This article describes an approach for solving the task of finding hyperparameters of an artificial ...
The goal of this thesis was to implement a practical tool for optimizing hy- perparameters of neural...
Hyperparameter optimization of a neural network is a nontrivial task. It is time-consuming to evalua...
The Bayesian analysis of neural networks is difficult because a simple prior over weights implies a ...
National audience<p>One common problem in building deep learning architectures is the choice of the ...
Since Bayesian learning for neural networks was introduced by MacKay it was applied to real world pr...
It took until the last decade to finally see a machine match human performance on essentially any ta...
In the world of machine learning, neural networks have become a powerful pattern recognition techniq...
Convolutional neural networks (CNN) are special types of multi-layer artificial neural networks in w...
This paper will discuss how a Gaussian process, which describes a probability distribution over an i...
We give a short review on Bayesian techniques for neural networks and demonstrate the advantages of ...
The Bayesian analysis of neural networks is dicult because a sim-ple prior over weights implies a co...
The solution to many science and engineering problems includes identifying the minimum or maximum of...
textA primary goal in systems neuroscience is to understand how neural spike responses encode inform...
Bayesian techniques have been developed over many years in a range of different fields, but have onl...
This article describes an approach for solving the task of finding hyperparameters of an artificial ...
The goal of this thesis was to implement a practical tool for optimizing hy- perparameters of neural...
Hyperparameter optimization of a neural network is a nontrivial task. It is time-consuming to evalua...
The Bayesian analysis of neural networks is difficult because a simple prior over weights implies a ...
National audience<p>One common problem in building deep learning architectures is the choice of the ...
Since Bayesian learning for neural networks was introduced by MacKay it was applied to real world pr...
It took until the last decade to finally see a machine match human performance on essentially any ta...
In the world of machine learning, neural networks have become a powerful pattern recognition techniq...
Convolutional neural networks (CNN) are special types of multi-layer artificial neural networks in w...
This paper will discuss how a Gaussian process, which describes a probability distribution over an i...
We give a short review on Bayesian techniques for neural networks and demonstrate the advantages of ...
The Bayesian analysis of neural networks is dicult because a sim-ple prior over weights implies a co...
The solution to many science and engineering problems includes identifying the minimum or maximum of...
textA primary goal in systems neuroscience is to understand how neural spike responses encode inform...
Bayesian techniques have been developed over many years in a range of different fields, but have onl...
This article describes an approach for solving the task of finding hyperparameters of an artificial ...