Resonances induced by Spiking Time Dependent Plasticity
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Neural populations exposed to a certain stimulus learn to represent it better. However, the process that leads local, self-organized rules to do so is unclear. We address the question of how can a neural periodic input be learned and use the Differential Hebbian Learning framework, coupled with a homeostatic mechanism to derive two self-consistency equations that lead to increased responses to the same stimulus. Although all our simulations are done with simple Leaky-Integrate and Fire neurons and standard Spiking Time Dependent Plasticity learning rules, our results can be easily interpreted in terms of rates and population codes.
[1] Subutai Ahmad,et al. Why Neurons Have Thousands of Synapses, a Theory of Sequence Memory in Neocortex , 2015, Front. Neural Circuits.
[2] Wulfram Gerstner,et al. Neuronal Dynamics: From Single Neurons To Networks And Models Of Cognition , 2014 .
[3] Harvey Swadlow,et al. Axonal conduction delays , 2012, Scholarpedia.