Networks of neurons connected by plastic all-or-none synapses tend to quickly forget previously acquired information when new patterns are learned. This problem could be solved for random uncorrelated patterns by randomly selecting a small fraction of synapses to be modified upon each stimulus presentation (slow stochastic learning). Here we show that more complex, but still linearly separable patterns, can be learned by networks with binary excitatory synapses in a finite number of presentations provided that: (1) there is non-vanishing global inhibition, (2) the binary synapses are changed with small enough probability (slow learning) only when the output neuron does not give the desired response (as in the classical perceptron rule) and ...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
Abstract. We study unsupervised Hebbian learning in a recurrent network in which synapses have a fin...
We consider a statistical framework for learning in a class of networks of spiking neurons. Our aim ...
Networks of neurons connected by plastic all-or-none synapses tend to quickly forget previously acqu...
The efficacy of a biological synapse is naturally bounded, and at some resolution, and is discrete a...
Learning in a neuronal network is often thought of as a linear superposition of synaptic modificatio...
The authors study neural network models in which the synaptic efficacies are restricted to have a pr...
Recent experimental studies indicate that synaptic changes induced by neuronal activity are discrete...
Recent experimental studies indicate that synaptic changes induced by neuronal activity are discrete...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
Abstract. We study unsupervised Hebbian learning in a recurrent network in which synapses have a fin...
We consider a statistical framework for learning in a class of networks of spiking neurons. Our aim ...
Networks of neurons connected by plastic all-or-none synapses tend to quickly forget previously acqu...
The efficacy of a biological synapse is naturally bounded, and at some resolution, and is discrete a...
Learning in a neuronal network is often thought of as a linear superposition of synaptic modificatio...
The authors study neural network models in which the synaptic efficacies are restricted to have a pr...
Recent experimental studies indicate that synaptic changes induced by neuronal activity are discrete...
Recent experimental studies indicate that synaptic changes induced by neuronal activity are discrete...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
Animals are proposed to learn the latent rules governing their environment in order to maximize thei...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
Abstract. We study unsupervised Hebbian learning in a recurrent network in which synapses have a fin...
We consider a statistical framework for learning in a class of networks of spiking neurons. Our aim ...