We propose and systematically evaluate three strategies for training dynamically-routed artificial neural networks: graphs of learned transformations through which different input signals may take different paths. Though some approaches have advantages over others, the resulting networks are often qualitatively similar. We find that, in dynamically-routed networks trained to classify images, layers and branches become specialized to process distinct categories of images. Additionally, given a fixed computational budget, dynamically-routed networks tend to perform better than comparable statically-routed networks
Whilst computer vision models built using self-supervised approaches are now commonplace, some impo...
We describe the use of neural networks for optimization and inference associated with a variety of c...
Behaving in a complex world requires flexible mapping between sensory inputs and motor outputs. One ...
We propose and systematically evaluate three strategies for training dynamically-routed artificial n...
Classic algorithms and machine learning systems like neural networks are both abundant in everyday l...
We introduce Dynamic Deep Neural Networks (D2NN), a new type of feed-forward deep neural network tha...
The Random Neural Network (RNN) has been used in a wide variety of applications, including image com...
Capsule Networks are an alternative to the conventional CNN structure for object recognition. They r...
Deep learning models for vision tasks are trained on large datasets under the assumption that there ...
The dynamic-routing problem in a packet-switching telecommunication network is addressed by a recedi...
Purpose. The classic algorithms for finding the shortest path on the graph that underlie existing ro...
We investigate two new distributed routing algorithms for data networks based on simple biological "...
© 2016 NIPS Foundation - All Rights Reserved. In a traditional convolutional layer, the learned filt...
International audienceDue to emerging real-time and multimedia applications, efficient routing of in...
Learning in a dynamic link network (DLN) is a composition of two dynamics: neural dynamics inside la...
Whilst computer vision models built using self-supervised approaches are now commonplace, some impo...
We describe the use of neural networks for optimization and inference associated with a variety of c...
Behaving in a complex world requires flexible mapping between sensory inputs and motor outputs. One ...
We propose and systematically evaluate three strategies for training dynamically-routed artificial n...
Classic algorithms and machine learning systems like neural networks are both abundant in everyday l...
We introduce Dynamic Deep Neural Networks (D2NN), a new type of feed-forward deep neural network tha...
The Random Neural Network (RNN) has been used in a wide variety of applications, including image com...
Capsule Networks are an alternative to the conventional CNN structure for object recognition. They r...
Deep learning models for vision tasks are trained on large datasets under the assumption that there ...
The dynamic-routing problem in a packet-switching telecommunication network is addressed by a recedi...
Purpose. The classic algorithms for finding the shortest path on the graph that underlie existing ro...
We investigate two new distributed routing algorithms for data networks based on simple biological "...
© 2016 NIPS Foundation - All Rights Reserved. In a traditional convolutional layer, the learned filt...
International audienceDue to emerging real-time and multimedia applications, efficient routing of in...
Learning in a dynamic link network (DLN) is a composition of two dynamics: neural dynamics inside la...
Whilst computer vision models built using self-supervised approaches are now commonplace, some impo...
We describe the use of neural networks for optimization and inference associated with a variety of c...
Behaving in a complex world requires flexible mapping between sensory inputs and motor outputs. One ...