Synaptic scaling balances learning in a spiking model of neocortex (Rowan & Neymotin 2013)


Rowan MS, Neymotin SA. (2013). Synaptic Scaling Balances Learning in a Spiking Model of Neocortex Adaptive and Natural Computing Algorithms. 7824

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References and models that cite this paper

Eguchi A, Neymotin SA, Stringer SM. (2014). Color opponent receptive fields self-organize in a biophysical model of visual cortex via spike-timing dependent plasticity Frontiers in neural circuits. 8 [PubMed]

Neymotin SA, Chadderdon GL, Kerr CC, Francis JT, Lytton WW. (2013). Reinforcement learning of two-joint virtual arm reaching in a computer model of sensorimotor cortex. Neural computation. 25 [PubMed]

Neymotin SA et al. (2015). Neuronal calcium wave propagation varies with changes in endoplasmic reticulum parameters: a computer model. Neural computation. 27 [PubMed]

Rowan MS, Neymotin SA, Lytton WW. (2014). Electrostimulation to reduce synaptic scaling driven progression of Alzheimer's disease. Frontiers in computational neuroscience. 8 [PubMed]

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