Recent breakthroughs in neuromorphic computing show that local forms of gradient descent learning are compatible with Spiking Neural Networks (SNNs) and synaptic plasticity. Although SNNs can be scalably implemented using neuromorphic VLSI, an architecture that can learn using gradient-descent in situ is still missing. In this paper, we propose a local, gradient-based, error-triggered learning algorithm with online ternary weight updates. The proposed algorithm enables online training of multi-layer SNNs with memristive neuromorphic hardware showing a small loss in the performance compared with the state-of-the-art. We also propose a hardware architecture based on memristive crossbar arrays to perform the required vector-matrix multiplicati...
Biologically plausible neuromorphic computing systems are attracting considerable attention due to t...
This paper presents an IC implementation of on-chip learning neuromorphic autoencoder unit in a form...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
Recent breakthroughs suggest that local, approximate gradient descent learning is compatible with Sp...
Memristive devices have emerged as compact nonvolatile memory elements which can be used as synapses...
Neuromorphic hardware inspired by the brain has attracted much attention for its advanced informatio...
Spiking neural networks have shown great promise for the design of low-power sensory-processing and ...
Spiking recurrent neural networks (RNNs) are a promising tool for solving a wide variety of complex ...
Spike-based learning with memristive devices in neuromorphic computing architectures typically uses ...
Event-driven neuromorphic hardware with on-line learning capabilities enables the low-power local pr...
Neuromorphic computing has shown great advantages towards cognitive tasks with high speed and remark...
The ability to learn re-occurring patterns in real-time sensory inputs in an unsupervised way is a k...
Memristive devices represent a promising technology for building neuromorphic electronic systems. In...
It is now accepted that the traditional von Neumann architecture, with processor and memory separati...
Designing energy efficient and scalable artificial networks for neuromorphic computing remains a cha...
Biologically plausible neuromorphic computing systems are attracting considerable attention due to t...
This paper presents an IC implementation of on-chip learning neuromorphic autoencoder unit in a form...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...
Recent breakthroughs suggest that local, approximate gradient descent learning is compatible with Sp...
Memristive devices have emerged as compact nonvolatile memory elements which can be used as synapses...
Neuromorphic hardware inspired by the brain has attracted much attention for its advanced informatio...
Spiking neural networks have shown great promise for the design of low-power sensory-processing and ...
Spiking recurrent neural networks (RNNs) are a promising tool for solving a wide variety of complex ...
Spike-based learning with memristive devices in neuromorphic computing architectures typically uses ...
Event-driven neuromorphic hardware with on-line learning capabilities enables the low-power local pr...
Neuromorphic computing has shown great advantages towards cognitive tasks with high speed and remark...
The ability to learn re-occurring patterns in real-time sensory inputs in an unsupervised way is a k...
Memristive devices represent a promising technology for building neuromorphic electronic systems. In...
It is now accepted that the traditional von Neumann architecture, with processor and memory separati...
Designing energy efficient and scalable artificial networks for neuromorphic computing remains a cha...
Biologically plausible neuromorphic computing systems are attracting considerable attention due to t...
This paper presents an IC implementation of on-chip learning neuromorphic autoencoder unit in a form...
The spiking neural network (SNN), an emerging brain-inspired computing paradigm, is positioned to en...