Feedforward inhibition and synaptic scaling are important adaptive processes that control the total input a neuron can receive from its afferents. While often studied in isolation, the two have been reported to co-occur in various brain regions. The functional implications of their interactions remain unclear, however. Based on a probabilistic modeling approach, we show here that fast feedforward inhibition and synaptic scaling interact synergistically during unsupervised learning. In technical terms, we model the input to a neural circuit using a normalized mixture model with Poisson noise. We demonstrate analytically and numerically that, in the presence of lateral inhibition introducing competition between different neurons, Hebbian plas...
Directed information transmission is paramount for many social, physical, and biological systems. Fo...
The responses of neurons in sensory cortex depend on the summation of excitatory and inhibitory syna...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
<div><p>Feedforward inhibition and synaptic scaling are important adaptive processes that control th...
<p>(A) An example set of generative fields for unconstrained (left column) and normalized (right col...
Cortical areas comprise multiple types of inhibitory interneurons with stereotypical connectivity mo...
Recent physiological studies have shown that neurons in various regions of the central nervous syste...
Inhibitory synapses contacting the soma and axon initial segment are commonly presumed to participat...
Repetitive activation of subpopulations of neurons leads to the formation of neuronal assemblies, wh...
textAbstract The synaptic input received by neurons in cortical circuits is in constant flux. From b...
Cortical areas comprise multiple types of inhibitory interneurons, with stereotypical connectivity m...
The cortex is sensitive to weak stimuli, but responds to stronger inputs without saturating. The mec...
Lateral inhibition is typically used to repel neural recep-tive fields. Here we introduce an additio...
Models of synaptic plasticity have been used to better understand neural development as well as lear...
ISBN : 978-2-9532965-0-1Neurons receive a large number of excitatory and inhibitory synaptic inputs ...
Directed information transmission is paramount for many social, physical, and biological systems. Fo...
The responses of neurons in sensory cortex depend on the summation of excitatory and inhibitory syna...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...
<div><p>Feedforward inhibition and synaptic scaling are important adaptive processes that control th...
<p>(A) An example set of generative fields for unconstrained (left column) and normalized (right col...
Cortical areas comprise multiple types of inhibitory interneurons with stereotypical connectivity mo...
Recent physiological studies have shown that neurons in various regions of the central nervous syste...
Inhibitory synapses contacting the soma and axon initial segment are commonly presumed to participat...
Repetitive activation of subpopulations of neurons leads to the formation of neuronal assemblies, wh...
textAbstract The synaptic input received by neurons in cortical circuits is in constant flux. From b...
Cortical areas comprise multiple types of inhibitory interneurons, with stereotypical connectivity m...
The cortex is sensitive to weak stimuli, but responds to stronger inputs without saturating. The mec...
Lateral inhibition is typically used to repel neural recep-tive fields. Here we introduce an additio...
Models of synaptic plasticity have been used to better understand neural development as well as lear...
ISBN : 978-2-9532965-0-1Neurons receive a large number of excitatory and inhibitory synaptic inputs ...
Directed information transmission is paramount for many social, physical, and biological systems. Fo...
The responses of neurons in sensory cortex depend on the summation of excitatory and inhibitory syna...
How can neural networks learn to efficiently represent complex and high-dimensional inputs via local...