AbstractWe propose a temporal sequence learning model in spiking neural networks consisting of Izhikevich spiking neurons. In our reward-based learning model, we train a network to associate two stimuli with temporal delay and a target response. Learning rule is dependent on reward signals that modulate the weight changes derived from spike-timing dependent plasticity (STDP) function. The dynamic properties of our model can be attributed to the sparse and recurrent connectivity, synaptic transmission delays, background activity and inter-stimulus interval (ISI). We have tested the learning in visual recognition task, and temporal AND and XOR problems. The network can be trained to associate a stimulus pair with its target response and to di...
In a previous work (Mohemmed et al., Method for training a spiking neuron to associate input–output ...
Artificial neural networks are learning paradigms which mimic the biological neural system. The temp...
Biological neurons communicate primarily via a spiking process. Recurrently connected spiking neural...
We propose a temporal sequence learning model in spiking neural networks consisting of Izhikevich sp...
AbstractWe propose a temporal sequence learning model in spiking neural networks consisting of Izhik...
We propose a temporal sequence learning model in spiking neural networks consisting of Izhikevich sp...
Increasing evidence indicates that biological neurons process information conveyed by the precise ti...
For goal-directed learning in spiking neural networks, target spike templates are usually required.O...
We propose a stimulus-stimulus association learning by coupling firing rate and precise spike timing...
It has previously been shown that by using spike-timing-dependent plasticity (STDP), neurons can ada...
We suggest a mechanism based on spike-timing-dependent plasticity (STDP) of synapses to store, retri...
We propose associative learning models that integrate spike-time dependent plasticity (STDP) and fir...
In this paper, we propose a reward-based learning model inspired by the findings from a behavioural ...
Transmission delays are an inherent component of spiking neural networks (SNNs) but relatively littl...
Spiking Neural Networks (SNNs) are one of the recent advances in machine learning that aim to furthe...
In a previous work (Mohemmed et al., Method for training a spiking neuron to associate input–output ...
Artificial neural networks are learning paradigms which mimic the biological neural system. The temp...
Biological neurons communicate primarily via a spiking process. Recurrently connected spiking neural...
We propose a temporal sequence learning model in spiking neural networks consisting of Izhikevich sp...
AbstractWe propose a temporal sequence learning model in spiking neural networks consisting of Izhik...
We propose a temporal sequence learning model in spiking neural networks consisting of Izhikevich sp...
Increasing evidence indicates that biological neurons process information conveyed by the precise ti...
For goal-directed learning in spiking neural networks, target spike templates are usually required.O...
We propose a stimulus-stimulus association learning by coupling firing rate and precise spike timing...
It has previously been shown that by using spike-timing-dependent plasticity (STDP), neurons can ada...
We suggest a mechanism based on spike-timing-dependent plasticity (STDP) of synapses to store, retri...
We propose associative learning models that integrate spike-time dependent plasticity (STDP) and fir...
In this paper, we propose a reward-based learning model inspired by the findings from a behavioural ...
Transmission delays are an inherent component of spiking neural networks (SNNs) but relatively littl...
Spiking Neural Networks (SNNs) are one of the recent advances in machine learning that aim to furthe...
In a previous work (Mohemmed et al., Method for training a spiking neuron to associate input–output ...
Artificial neural networks are learning paradigms which mimic the biological neural system. The temp...
Biological neurons communicate primarily via a spiking process. Recurrently connected spiking neural...