Learning in networks of binary synapses is known to be an NP-complete problem. A combined stochastic local search strategy in the synaptic weight space is constructed to further improve the learning performance of a single random walker. We apply two correlated random walkers guided by their Hamming distance and associated energy costs (the number of unlearned patterns) to learn a same large set of patterns. Each walker first learns a small part of the whole pattern set (partially different for both walkers but with the same amount of patterns) and then both walkers explore their respective weight spaces cooperatively to find a solution to classify the whole pattern set correctly. The desired solutions locate at the common parts of weight s...
Abstract We consider the generalization problem for a perceptron with binary synapses, implementing ...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
We show how coupling of local optimization processes can lead to better solutions than multi-start ...
Learning in networks of binary synapses is known to be an NP-complete problem. A combined stochastic...
We show that discrete synaptic weights can be efficiently used for learning in large scale neural sy...
Recent experimental studies indicate that synaptic changes induced by neuronal activity are discrete...
The efficacy of a biological synapse is naturally bounded, and at some resolution, and is discrete a...
Learning in neural networks poses peculiar challenges when using discretized rather then continuous ...
We show that a message-passing process allows us to store in binary ‘‘material'' synapses a number o...
We have found a more general formulation of the REINFORCE learning principle which had been proposed...
The ability of processing and storing information is considered a characteristic trait of intellige...
Stochasticity and limited precision of synaptic weights in neural network models is a key aspect of ...
We consider a statistical framework for learning in a class of networks of spiking neurons. Our aim ...
Stochasticity and limited precision of synaptic weights in neural network models are key aspects of ...
Large scale distributed systems, such as natural neuronal and artificial systems, have many local in...
Abstract We consider the generalization problem for a perceptron with binary synapses, implementing ...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
We show how coupling of local optimization processes can lead to better solutions than multi-start ...
Learning in networks of binary synapses is known to be an NP-complete problem. A combined stochastic...
We show that discrete synaptic weights can be efficiently used for learning in large scale neural sy...
Recent experimental studies indicate that synaptic changes induced by neuronal activity are discrete...
The efficacy of a biological synapse is naturally bounded, and at some resolution, and is discrete a...
Learning in neural networks poses peculiar challenges when using discretized rather then continuous ...
We show that a message-passing process allows us to store in binary ‘‘material'' synapses a number o...
We have found a more general formulation of the REINFORCE learning principle which had been proposed...
The ability of processing and storing information is considered a characteristic trait of intellige...
Stochasticity and limited precision of synaptic weights in neural network models is a key aspect of ...
We consider a statistical framework for learning in a class of networks of spiking neurons. Our aim ...
Stochasticity and limited precision of synaptic weights in neural network models are key aspects of ...
Large scale distributed systems, such as natural neuronal and artificial systems, have many local in...
Abstract We consider the generalization problem for a perceptron with binary synapses, implementing ...
We consider the generalization problem for a perceptron with binary synapses, implementing the Stoch...
We show how coupling of local optimization processes can lead to better solutions than multi-start ...