The biological brain is a highly plastic system within which the efficacy and structure of synaptic connections are constantly changing in response to internal and external stimuli. While numerous models of this plastic behavior exist at various levels of abstraction, how these mechanisms allow the brain to learn meaningful values is unclear. The Neural Engineering Framework (NEF) is a hypothesis about how large-scale neural systems represent values using populations of spiking neurons, and transform them using functions implemented by the synaptic weights between populations. By exploiting the fact that these connection weight matrices are factorable, we have recently shown that static NEF models can be simulated very efficiently using the...
Structural synaptic plasticity is an omnipresent mechanism in mammalian brains, involved in learning...
Abstract — Recent development of neuromorphic hardware offers great potential to speed up simulation...
Abstract — Large-scale neural hardware systems are trend-ing increasingly towards the “neuromimetic ...
By building and simulating neural systems we hope to understand how the brain may work and use this ...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
Many of the precise biological mechanisms of synaptic plasticity remain elusive, but simulations of ...
While the adult human brain has approximately 8.8 × 1010 neurons, this number is dwarfed by its 1 × ...
Associative memories have been an active area of research over the last forty years (Willshaw et al....
Neural Circuits This paper reviews a system capable of performing multiple cognitive functions using...
In the recent year of artificial intelligence and spintronics memory device technology advancement, ...
SpiNNaker is a digital, neuromorphic architecture designed for simulating large-scale spiking neural...
SpiNNaker is a digital neuromorphic hardware designed to reduce simulation time and power consumptio...
In the recent year of artificial intelligence and spintronics memory device technology advancement, ...
Structural synaptic plasticity is an omnipresent mechanism in mammalian brains, involved in learning...
Abstract — Recent development of neuromorphic hardware offers great potential to speed up simulation...
Abstract — Large-scale neural hardware systems are trend-ing increasingly towards the “neuromimetic ...
By building and simulating neural systems we hope to understand how the brain may work and use this ...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
International audienceMany of the precise biological mechanisms of synaptic plasticity remain elusiv...
Many of the precise biological mechanisms of synaptic plasticity remain elusive, but simulations of ...
While the adult human brain has approximately 8.8 × 1010 neurons, this number is dwarfed by its 1 × ...
Associative memories have been an active area of research over the last forty years (Willshaw et al....
Neural Circuits This paper reviews a system capable of performing multiple cognitive functions using...
In the recent year of artificial intelligence and spintronics memory device technology advancement, ...
SpiNNaker is a digital, neuromorphic architecture designed for simulating large-scale spiking neural...
SpiNNaker is a digital neuromorphic hardware designed to reduce simulation time and power consumptio...
In the recent year of artificial intelligence and spintronics memory device technology advancement, ...
Structural synaptic plasticity is an omnipresent mechanism in mammalian brains, involved in learning...
Abstract — Recent development of neuromorphic hardware offers great potential to speed up simulation...
Abstract — Large-scale neural hardware systems are trend-ing increasingly towards the “neuromimetic ...