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Synaptic Plasticity in Neural Networks Needs Homeostasis with a Fast Rate Detector
Authors:Friedemann Zenke  Guillaume Hennequin  Wulfram Gerstner
Institution:1.School of Computer and Communication Sciences and School of Life Sciences, Brain Mind Institute, Ecole polytechnique fédérale de Lausanne, Lausanne, Switzerland;2.Computational and Biological Learning Laboratory, Department of Engineering, University of Cambridge, Cambridge, United Kingdom;Research Center Jülich, Germany
Abstract:Hebbian changes of excitatory synapses are driven by and further enhance correlations between pre- and postsynaptic activities. Hence, Hebbian plasticity forms a positive feedback loop that can lead to instability in simulated neural networks. To keep activity at healthy, low levels, plasticity must therefore incorporate homeostatic control mechanisms. We find in numerical simulations of recurrent networks with a realistic triplet-based spike-timing-dependent plasticity rule (triplet STDP) that homeostasis has to detect rate changes on a timescale of seconds to minutes to keep the activity stable. We confirm this result in a generic mean-field formulation of network activity and homeostatic plasticity. Our results strongly suggest the existence of a homeostatic regulatory mechanism that reacts to firing rate changes on the order of seconds to minutes.
Keywords:
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