Models of Reward-Modulated Spike-Timing-Dependent Plasticity
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Institute of Electrical and Electronics Engineers2004
In timing-based neural codes, neurons have to emit action potentials at precise moments in time. We use a supervised learning paradigm to derive a synaptic update rule that optimizes via gradient ascent the likelihood of postsynaptic firing at one or sever ...