Bellec et al. present a mathematically founded approximation for gradient descent training of recurrent neural networks without backwards propagation in time. This enables biologically plausible training of spike-based neural network models with working memory and supports on-chip training of neuromorphic hardware
Understanding intelligence and how it allows humans to learn, to make decision and form memories, is...
In recent years the field of neuromorphic low-power systems that consume orders of magnitude less po...
The exact form of a gradient-following learning algorithm for completely recurrent networks running ...
Networks of spiking neurons present a biologically more plausible alternative to perceptron networks...
Recurrent spiking neural networks (RSNN) in the brain learn to perform a wide range of perceptual, c...
Recurrent spiking neural networks (RSNN) in the brain learn to perform a wide range of perceptual, c...
Recurrent spiking neural networks (RSNN) in the brain learn to perform a wide range of perceptual, c...
Recurrent spiking neural networks (RSNN) in the brain learn to perform a wide range of perceptual, c...
We survey learning algorithms for recurrent neural networks with hidden units, and put the various t...
Spiking neural networks (SNNs) are believed to be highly computationally and energy efficient for sp...
In recent years the field of neuromorphic low-power systems gained significant momentum, spurring br...
Backpropagation is almost universally used to train artificial neural networks. However, there are s...
Spiking neural networks are nature's versatile solution to fault-tolerant and energy efficient signa...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
In this thesis, a new supervised learning algorithm for multilayer spiking neural networks is presen...
Understanding intelligence and how it allows humans to learn, to make decision and form memories, is...
In recent years the field of neuromorphic low-power systems that consume orders of magnitude less po...
The exact form of a gradient-following learning algorithm for completely recurrent networks running ...
Networks of spiking neurons present a biologically more plausible alternative to perceptron networks...
Recurrent spiking neural networks (RSNN) in the brain learn to perform a wide range of perceptual, c...
Recurrent spiking neural networks (RSNN) in the brain learn to perform a wide range of perceptual, c...
Recurrent spiking neural networks (RSNN) in the brain learn to perform a wide range of perceptual, c...
Recurrent spiking neural networks (RSNN) in the brain learn to perform a wide range of perceptual, c...
We survey learning algorithms for recurrent neural networks with hidden units, and put the various t...
Spiking neural networks (SNNs) are believed to be highly computationally and energy efficient for sp...
In recent years the field of neuromorphic low-power systems gained significant momentum, spurring br...
Backpropagation is almost universally used to train artificial neural networks. However, there are s...
Spiking neural networks are nature's versatile solution to fault-tolerant and energy efficient signa...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
In this thesis, a new supervised learning algorithm for multilayer spiking neural networks is presen...
Understanding intelligence and how it allows humans to learn, to make decision and form memories, is...
In recent years the field of neuromorphic low-power systems that consume orders of magnitude less po...
The exact form of a gradient-following learning algorithm for completely recurrent networks running ...