We present an analysis of different techniques for selecting the connection be-tween layers of deep neural networks. Traditional deep neural networks use ran-dom connection tables between layers to keep the number of connections small and tune to different image features. This kind of connection performs adequately in supervised deep networks because their values are refined during the training. On the other hand, in unsupervised learning, one cannot rely on back-propagation techniques to learn the connections between layers. In this work, we tested four different techniques for connecting the first layer of the network to the second layer on the CIFAR and SVHN datasets and showed that the accuracy can be im-proved up to 3 % depending on th...
Although global backpropagation has become the mainstream training method for convolutional neural n...
Understanding the functional principles of information processing in deep neural networks continues ...
Deep neural networks significantly power the success of machine learning and artificial intelligence...
Deep learning algorithms (in particular Convolutional Neural Networks, or CNNs) have shown their sup...
The question of how and why the phenomenon of mode connectivity occurs in training deep neural netwo...
Deep learning has been making headlines in recent years and is often portrayed as an emerging techno...
Deep learning has been making headlines in recent years and is often portrayed as an emerging techno...
Advanced deep neural networks (DNNs), designed by either human or AutoML algorithms, are growing inc...
The development of deep neural networks has taken two directions. On one hand, the networks become d...
A. Subset of neural connections prior to STDP learning procedure. Higher-layer connections (layers 2...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
Recent years have witnessed two seemingly opposite developments of deep convolutional neural network...
In this paper, we propose a novel approach for efficient training of deep neural networks in a botto...
Recent deep learning and unsupervised feature learning systems that learn from unlabeled data have a...
Although global backpropagation has become the mainstream training method for convolutional neural n...
Understanding the functional principles of information processing in deep neural networks continues ...
Deep neural networks significantly power the success of machine learning and artificial intelligence...
Deep learning algorithms (in particular Convolutional Neural Networks, or CNNs) have shown their sup...
The question of how and why the phenomenon of mode connectivity occurs in training deep neural netwo...
Deep learning has been making headlines in recent years and is often portrayed as an emerging techno...
Deep learning has been making headlines in recent years and is often portrayed as an emerging techno...
Advanced deep neural networks (DNNs), designed by either human or AutoML algorithms, are growing inc...
The development of deep neural networks has taken two directions. On one hand, the networks become d...
A. Subset of neural connections prior to STDP learning procedure. Higher-layer connections (layers 2...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
The Cascade-Correlation learning algorithm constructs a multi-layer artificial neural network as it ...
Recent years have witnessed two seemingly opposite developments of deep convolutional neural network...
In this paper, we propose a novel approach for efficient training of deep neural networks in a botto...
Recent deep learning and unsupervised feature learning systems that learn from unlabeled data have a...
Although global backpropagation has become the mainstream training method for convolutional neural n...
Understanding the functional principles of information processing in deep neural networks continues ...
Deep neural networks significantly power the success of machine learning and artificial intelligence...