Reservoir Computing (RC) is a well-known strategy for designing Recurrent Neural Networks featured by striking efficiency of training. The crucial aspect of RC is to properly instantiate the hidden recurrent layer that serves as dynamical memory to the system. In this respect, the common recipe is to create a pool of randomly and sparsely connected recurrent neurons. While the aspect of sparsity in the design of RC systems has been debated in the literature, it is nowadays understood mainly as a way to enhance the efficiency of computation, exploiting sparse matrix operations. In this paper, we empirically investigate the role of sparsity in RC network design under the perspective of the richness of the developed temporal representations. W...
The extension of deep learning towards temporal data processing is gaining an increasing research i...
In this paper, we propose an empirical analysis of deep recurrent neural network (RNN) architectures...
Reservoir computing (RC), first applied to temporal signal processing, is a recurrent neural network...
Reservoir Computing (RC) is a well-known strategy for designing Recurrent Neural Networks featured b...
Reservoir computing (RC) is a popular class of recurrent neural networks (RNNs) with untrained dynam...
Reservoir computing (RC) systems are powerful models for online computations on input sequences. The...
Reservoir computing (RC) studies the properties of large recurrent networks of artificial neurons, w...
Reservoir Computing (RC) is a recently introduced scheme to employ recurrent neural networks while c...
Abstract Sparse neural networks can achieve performance comparable to fully connected networks but n...
International audienceNeural population dynamics are often highly coordinated, allowing task-related...
Reservoir Computing is a new paradigm for using Recurrent Neural Networks which shows promising resu...
Reservoir Computing (RC) is increasingly being used as a conceptually simple yet powerful method for...
Reservoir Computing (RC) offers a computationally efficient and well performing technique for using the...
Recurrent Neural Networks (RNNs) are amongst the most powerful Machine Learning models to deal with ...
The extension of deep learning towards temporal data processing is gaining an increasing research i...
In this paper, we propose an empirical analysis of deep recurrent neural network (RNN) architectures...
Reservoir computing (RC), first applied to temporal signal processing, is a recurrent neural network...
Reservoir Computing (RC) is a well-known strategy for designing Recurrent Neural Networks featured b...
Reservoir computing (RC) is a popular class of recurrent neural networks (RNNs) with untrained dynam...
Reservoir computing (RC) systems are powerful models for online computations on input sequences. The...
Reservoir computing (RC) studies the properties of large recurrent networks of artificial neurons, w...
Reservoir Computing (RC) is a recently introduced scheme to employ recurrent neural networks while c...
Abstract Sparse neural networks can achieve performance comparable to fully connected networks but n...
International audienceNeural population dynamics are often highly coordinated, allowing task-related...
Reservoir Computing is a new paradigm for using Recurrent Neural Networks which shows promising resu...
Reservoir Computing (RC) is increasingly being used as a conceptually simple yet powerful method for...
Reservoir Computing (RC) offers a computationally efficient and well performing technique for using the...
Recurrent Neural Networks (RNNs) are amongst the most powerful Machine Learning models to deal with ...
The extension of deep learning towards temporal data processing is gaining an increasing research i...
In this paper, we propose an empirical analysis of deep recurrent neural network (RNN) architectures...
Reservoir computing (RC), first applied to temporal signal processing, is a recurrent neural network...