The effectiveness of recurrent neural networks can be largely influenced by their ability to store into their dynamical memory information extracted from input sequences at different frequencies and timescales. Such a feature can be introduced into a neural architecture by an appropriate modularization of the dynamic memory. In this paper we propose a novel incrementally trained recurrent architecture targeting explicitly multi-scale learning. First, we show how to extend the architecture of a simple RNN by separating its hidden state into different modules, each subsampling the network hidden activations at different frequencies. Then, we discuss a training algorithm where new modules are iteratively added to the model to learn pr...
This past year, RNNs have seen a lot of attention as powerful models that are able to decode sequenc...
Recurrent neural networks can learn complex transduction problems that require maintaining and activ...
In this paper, a novel architecture of Recurrent Neural Network (RNN) is designed and experimented. ...
The effectiveness of recurrent neural networks can be largely influenced by their ability to store ...
In the context of temporal sequences and Recurrent Neural Networks, the vanishing gradient and the n...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Recent advancements in recurrent neural network (RNN) research have demonstrated the superiority of ...
Continual Learning (CL) is the process of learning new things on top of what has already been learne...
Dans un problème de prédiction à multiples pas discrets, la prédiction à chaque instant peut dépendr...
A neural model for temporal pattern generation is used and analyzed for training with multiple compl...
The ability to learn in dynamic, nonstationary environments without forgetting previous knowledge, a...
The ability to learn in dynamic, nonstationary environments without forgetting previous knowledge, a...
Recurrent neural networks can learn complex transduction problems that require maintaining and activ...
This past year, RNNs have seen a lot of attention as powerful models that are able to decode sequenc...
Recurrent neural networks can learn complex transduction problems that require maintaining and activ...
In this paper, a novel architecture of Recurrent Neural Network (RNN) is designed and experimented. ...
The effectiveness of recurrent neural networks can be largely influenced by their ability to store ...
In the context of temporal sequences and Recurrent Neural Networks, the vanishing gradient and the n...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Learning to solve sequential tasks with recurrent models requires the ability to memorize long seque...
Recent advancements in recurrent neural network (RNN) research have demonstrated the superiority of ...
Continual Learning (CL) is the process of learning new things on top of what has already been learne...
Dans un problème de prédiction à multiples pas discrets, la prédiction à chaque instant peut dépendr...
A neural model for temporal pattern generation is used and analyzed for training with multiple compl...
The ability to learn in dynamic, nonstationary environments without forgetting previous knowledge, a...
The ability to learn in dynamic, nonstationary environments without forgetting previous knowledge, a...
Recurrent neural networks can learn complex transduction problems that require maintaining and activ...
This past year, RNNs have seen a lot of attention as powerful models that are able to decode sequenc...
Recurrent neural networks can learn complex transduction problems that require maintaining and activ...
In this paper, a novel architecture of Recurrent Neural Network (RNN) is designed and experimented. ...