Neuronal network models of high-level brain functions such as memory recall and reasoning often rely on the presence of some form of noise. The majority of these models assumes that each neuron in the functional network is equipped with its own private source of randomness, often in the form of uncorrelated external noise. In vivo, synaptic background input has been suggested to serve as the main source of noise in biological neuronal networks. However, the finiteness of the number of such noise sources constitutes a challenge to this idea. Here, we show that shared-noise correlations resulting from a finite number of independent noise sources can substantially impair the performance of stochastic network models. We demonstrate that this pr...
Chicca E, Fusi S. Stochastic synaptic plasticity in deterministic aVLSI networks of spiking neurons....
Correlations in spike-train ensembles can seriously impair the encoding of information by their spat...
In this work we propose taking noise into account when modeling the neuronal activity in a correlati...
Neuronal-network models of high-level brain function often rely on the presence of stochasticity. Th...
Neural-network models of brain function often rely on the presence ofnoise [1-5]. To date, the inter...
Neural-network models of high-level brain functions such as memory recall and reasoning often rely o...
How does reliable computation emerge from networks of noisy neurons? While individual neurons are in...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
The ability to discriminate between similar sensory stimuli relies on the amount of information enco...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Chicca E, Fusi S. Stochastic synaptic plasticity in deterministic aVLSI networks of spiking neurons....
Correlations in spike-train ensembles can seriously impair the encoding of information by their spat...
In this work we propose taking noise into account when modeling the neuronal activity in a correlati...
Neuronal-network models of high-level brain function often rely on the presence of stochasticity. Th...
Neural-network models of brain function often rely on the presence ofnoise [1-5]. To date, the inter...
Neural-network models of high-level brain functions such as memory recall and reasoning often rely o...
How does reliable computation emerge from networks of noisy neurons? While individual neurons are in...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
Animals rely on different decision strategies when faced with ambiguous or uncertain cues. Depending...
The ability to discriminate between similar sensory stimuli relies on the amount of information enco...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Cortical networks exhibit intrinsic dynamics that drive coordinated, large-scale fluctuations across...
Chicca E, Fusi S. Stochastic synaptic plasticity in deterministic aVLSI networks of spiking neurons....
Correlations in spike-train ensembles can seriously impair the encoding of information by their spat...
In this work we propose taking noise into account when modeling the neuronal activity in a correlati...