We show that a form of synaptic plasticity recently discovered in slices of the rat visual cortex (Artola et al. 1990) can support an error-correcting learning rule. The rule increases weights when both pre- and postsynaptic units are highly active, and decreases them when pre-synaptic activity is high and postsynaptic activation is less than the threshold for weight increment but greater than a lower threshold. We show that this rule corrects false positive outputs in feedforward associative memory, that in an appropriate opponent-unit architecture it corrects misses, and that it performs better than the optimal Hebbian learning rule reported by Willshaw and Dayan (1990)
The plasticity property of biological neural networks allows them to perform learning and optimize t...
Learning in a neuronal network is often thought of as a linear superposition of synaptic modificatio...
This review summarizes recently proposed theories on how neural circuits in the brain could approxim...
We show that a form of synaptic plasticity recently discovered in slices of the rat visual cortex (A...
It has recently been shown in a brain–computer interface experiment that motor cortical neurons chan...
Changes of synaptic connections between neurons are thought to be the physiological basis of learnin...
that synapses might be the locations at which memory is laid down in the brain. Some 50 years later,...
The thesis tries and models a neural network in a way which, at essential points, is biologically re...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
When neurons fire together they wire together. This is Donald Hebb's famous postulate. However, Hebb...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
To efficiently learn from feedback, cortical networks need to update synaptic weights on multiple le...
The brain processes information through multiple layers of neurons. This deep architecture is repres...
In this paper, we review the evidence that learning is driven by signaling of Prediction Error [PE] ...
Recent studies have proposed that the diffusion of messenger molecules, such as monoamines, can med...
The plasticity property of biological neural networks allows them to perform learning and optimize t...
Learning in a neuronal network is often thought of as a linear superposition of synaptic modificatio...
This review summarizes recently proposed theories on how neural circuits in the brain could approxim...
We show that a form of synaptic plasticity recently discovered in slices of the rat visual cortex (A...
It has recently been shown in a brain–computer interface experiment that motor cortical neurons chan...
Changes of synaptic connections between neurons are thought to be the physiological basis of learnin...
that synapses might be the locations at which memory is laid down in the brain. Some 50 years later,...
The thesis tries and models a neural network in a way which, at essential points, is biologically re...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
When neurons fire together they wire together. This is Donald Hebb's famous postulate. However, Hebb...
Synaptic plasticity is a major mechanism for adaptation, learning, and memory. Yet current models st...
To efficiently learn from feedback, cortical networks need to update synaptic weights on multiple le...
The brain processes information through multiple layers of neurons. This deep architecture is repres...
In this paper, we review the evidence that learning is driven by signaling of Prediction Error [PE] ...
Recent studies have proposed that the diffusion of messenger molecules, such as monoamines, can med...
The plasticity property of biological neural networks allows them to perform learning and optimize t...
Learning in a neuronal network is often thought of as a linear superposition of synaptic modificatio...
This review summarizes recently proposed theories on how neural circuits in the brain could approxim...