Cortical neurons are typically driven by several thousand synapses. The precise spatiotemporal pattern formed by these inputs can modulate the response of a post-synaptic cell. In this work, we explore how the temporal structure of pre-synaptic inhibitory and excitatory inputs impact the post-synaptic firing of a conductance-based integrate and fire neuron. Both the excitatory and inhibitory input was modeled by renewal gamma processes with varying shape factors for modeling regular and temporally random Poisson activity. We demonstrate that the temporal structure of mutually independent inputs affects the post-synaptic firing, while the strength of the effect depends on the firing rates of both the excitatory and inhibitory inputs. In a se...
We present a spiking neuron model that allows for an analytic calculation of the correlations betwee...
We studied the hypothesis that synaptic dynamics is controlled by three basic principles: (1) synaps...
Rate-coded Hebbian learning, as characterized by the BCM formulation, is an established computationa...
Cortical neurons are typically driven by several thousand synapses. The precise spatiotemporal patte...
AbstractThe spike trains that transmit information between neurons are stochastic. We used the theor...
Spike-timing-dependent plasticity (STDP) determines the evolution of the synaptic weights according ...
Synaptic plasticity is believed to be the biological substrate underlying learning and memory. One o...
Experimental studies have observed synaptic potentiation when a presynaptic neuron fires shortly bef...
Synaptic plasticity is thought to be the neuronal correlate of learning. Moreover, modification of s...
Recent experimental observations of spike-timing-dependent synaptic plasticity (STDP) have revitaliz...
We study analytically a model of long-term synaptic plasticity where synaptic changes are triggered ...
Short-term synaptic depression, caused by depletion of releasable neurotransmitter, modulates the st...
Abstract. Spike-timing-dependent plasticity (STDP) strengthens synapses that are activated immediate...
Synaptic plasticity is sensitive to both the rate and the timing of pre- and postsynaptic spikes. In...
Copyright © 2012 S. Fernando and K. Yamada. This is an open access article distributed under the Cre...
We present a spiking neuron model that allows for an analytic calculation of the correlations betwee...
We studied the hypothesis that synaptic dynamics is controlled by three basic principles: (1) synaps...
Rate-coded Hebbian learning, as characterized by the BCM formulation, is an established computationa...
Cortical neurons are typically driven by several thousand synapses. The precise spatiotemporal patte...
AbstractThe spike trains that transmit information between neurons are stochastic. We used the theor...
Spike-timing-dependent plasticity (STDP) determines the evolution of the synaptic weights according ...
Synaptic plasticity is believed to be the biological substrate underlying learning and memory. One o...
Experimental studies have observed synaptic potentiation when a presynaptic neuron fires shortly bef...
Synaptic plasticity is thought to be the neuronal correlate of learning. Moreover, modification of s...
Recent experimental observations of spike-timing-dependent synaptic plasticity (STDP) have revitaliz...
We study analytically a model of long-term synaptic plasticity where synaptic changes are triggered ...
Short-term synaptic depression, caused by depletion of releasable neurotransmitter, modulates the st...
Abstract. Spike-timing-dependent plasticity (STDP) strengthens synapses that are activated immediate...
Synaptic plasticity is sensitive to both the rate and the timing of pre- and postsynaptic spikes. In...
Copyright © 2012 S. Fernando and K. Yamada. This is an open access article distributed under the Cre...
We present a spiking neuron model that allows for an analytic calculation of the correlations betwee...
We studied the hypothesis that synaptic dynamics is controlled by three basic principles: (1) synaps...
Rate-coded Hebbian learning, as characterized by the BCM formulation, is an established computationa...