We propose an associative learning model using reward mod- ulated spike-time dependent plasticity in reinforcement learning paradigm. The task of learning is to associate a stimulus pair, known as the predictor− choice pair, to a target response. In our model, a generic architecture of neural network has been used, with minimal assumption about the network dynamics. We demonstrate that stimulus-stimulus-response as- sociation can be implemented in a stochastic way within a noisy setting. The network has rich dynamics resulting from its recurrent connectiv- ity and background activity. The algorithm can learn temporal sequence detection and solve temporal XOR problem
In this paper, we propose a simple supervised associative learning approach for spiking neural netwo...
<div><p>Many cognitive and motor functions are enabled by the temporal representation and processing...
We propose a stimulus-stimulus association learning by coupling firing rate and precise spike timing...
We propose an associative learning model using reward mod- ulated spike-time dependent plasticity in...
We propose an associative learning model using reward modulated spike-time dependent plasticity in r...
We propose associative learning models that integrate spike-time dependent plasticity (STDP) and fir...
For goal-directed learning in spiking neural networks, target spike templates are usually required.O...
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...
In this paper we propose a lateral inhibitory spiking neural network for reward-based associative le...
Learning agents, whether natural or artificial, must update their internal parameters in order to im...
The persistent modification of synaptic efficacy as a function of the rela-tive timing of pre- and p...
In this paper, we propose a reward-based learning model inspired by the findings from a behavioural ...
In this paper, we propose a simple supervised associative learning approach for spiking neural netwo...
Learning by reinforcement is important in shaping animal behavior, and in particular in behavioral d...
In this paper, we propose a simple supervised associative learning approach for spiking neural netwo...
<div><p>Many cognitive and motor functions are enabled by the temporal representation and processing...
We propose a stimulus-stimulus association learning by coupling firing rate and precise spike timing...
We propose an associative learning model using reward mod- ulated spike-time dependent plasticity in...
We propose an associative learning model using reward modulated spike-time dependent plasticity in r...
We propose associative learning models that integrate spike-time dependent plasticity (STDP) and fir...
For goal-directed learning in spiking neural networks, target spike templates are usually required.O...
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...
In this paper we propose a lateral inhibitory spiking neural network for reward-based associative le...
Learning agents, whether natural or artificial, must update their internal parameters in order to im...
The persistent modification of synaptic efficacy as a function of the rela-tive timing of pre- and p...
In this paper, we propose a reward-based learning model inspired by the findings from a behavioural ...
In this paper, we propose a simple supervised associative learning approach for spiking neural netwo...
Learning by reinforcement is important in shaping animal behavior, and in particular in behavioral d...
In this paper, we propose a simple supervised associative learning approach for spiking neural netwo...
<div><p>Many cognitive and motor functions are enabled by the temporal representation and processing...
We propose a stimulus-stimulus association learning by coupling firing rate and precise spike timing...