Randomized Neural Networks explore the behavior of neural systems where the majority of connections are fixed, either in a stochastic or a deterministic fashion. Typical examples of such systems consist of multi-layered neural network architectures where the connections to the hidden layer(s) are left untrained after initialization. Limiting the training algorithms to operate on a reduced set of weights inherently characterizes the class of Randomized Neural Networks with a number of intriguing features. Among them, the extreme efficiency of the resulting learning processes is undoubtedly a striking advantage with respect to fully trained architectures. Besides, despite the involved simplifications, randomized neural systems possess remarka...
Context of the tutorial: the IEEE CIS Summer School on Computational Intelligence and Applications (...
We introduce a probability distribution, combined with an efficient sampling algorithm, for weights ...
Deep convolutional neural networks (ConvNets) have rapidly grownin popularity due to their powerful ...
Randomized Neural Networks explore the behavior of neural systems where the majority of connections ...
This letter identifies original independent works in the domain of randomization-based feedforward n...
Deep learning has been extremely successful in recent years. However, it should be noted that neural...
Deep neural networks train millions of parameters to achieve state-of-the-art performance on a wide ...
Neural Networks (NNs) with random weights represent nowadays a topic of consolidated use in the Mach...
Deep neural networks have had tremendous success in a wide range of applications where they achieve ...
The random neural network (RNN) is a mathematical model for an ``integrate and fire'' spiking networ...
Given any deep fully connected neural network, initialized with random Gaussian parameters, we bound...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
Deep neural networks have shown their promise in recent years with their state-of-the-art results. ...
Reservoir computing (RC) is a popular class of recurrent neural networks (RNNs) with untrained dynam...
Training deep neural networks with the error backpropagation algorithm is considered implausible fro...
Context of the tutorial: the IEEE CIS Summer School on Computational Intelligence and Applications (...
We introduce a probability distribution, combined with an efficient sampling algorithm, for weights ...
Deep convolutional neural networks (ConvNets) have rapidly grownin popularity due to their powerful ...
Randomized Neural Networks explore the behavior of neural systems where the majority of connections ...
This letter identifies original independent works in the domain of randomization-based feedforward n...
Deep learning has been extremely successful in recent years. However, it should be noted that neural...
Deep neural networks train millions of parameters to achieve state-of-the-art performance on a wide ...
Neural Networks (NNs) with random weights represent nowadays a topic of consolidated use in the Mach...
Deep neural networks have had tremendous success in a wide range of applications where they achieve ...
The random neural network (RNN) is a mathematical model for an ``integrate and fire'' spiking networ...
Given any deep fully connected neural network, initialized with random Gaussian parameters, we bound...
Kernel methods and neural networks are two important schemes in the supervised learning field. The t...
Deep neural networks have shown their promise in recent years with their state-of-the-art results. ...
Reservoir computing (RC) is a popular class of recurrent neural networks (RNNs) with untrained dynam...
Training deep neural networks with the error backpropagation algorithm is considered implausible fro...
Context of the tutorial: the IEEE CIS Summer School on Computational Intelligence and Applications (...
We introduce a probability distribution, combined with an efficient sampling algorithm, for weights ...
Deep convolutional neural networks (ConvNets) have rapidly grownin popularity due to their powerful ...