A Complex-Valued Firing-Rate Model That Approximates the Dynamics of Spiking Networks
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[1] Duane Q. Nykamp,et al. A Population Density Approach That Facilitates Large-Scale Modeling of Neural Networks: Analysis and an Application to Orientation Tuning , 2004, Journal of Computational Neuroscience.
[2] J. Cowan,et al. Excitatory and inhibitory interactions in localized populations of model neurons. , 1972, Biophysical journal.
[3] P Lánský,et al. On approximations of Stein's neuronal model. , 1984, Journal of theoretical biology.
[4] B. Sakmann,et al. Cortex Is Driven by Weak but Synchronously Active Thalamocortical Synapses , 2006, Science.
[5] H. Sompolinsky,et al. Chaos in Neuronal Networks with Balanced Excitatory and Inhibitory Activity , 1996, Science.
[6] Xiao-Jing Wang,et al. What determines the frequency of fast network oscillations with irregular neural discharges? I. Synaptic dynamics and excitation-inhibition balance. , 2003, Journal of neurophysiology.
[7] D. Simons,et al. Cortical damping: analysis of thalamocortical response transformations in rodent barrel cortex. , 2003, Cerebral cortex.
[8] Bard Ermentrout,et al. Reduction of Conductance-Based Models with Slow Synapses to Neural Nets , 1994, Neural Computation.
[9] Robert C. Liu,et al. Variability and information in a neural code of the cat lateral geniculate nucleus. , 2001, Journal of neurophysiology.
[10] Nicolas Brunel,et al. How Connectivity, Background Activity, and Synaptic Properties Shape the Cross-Correlation between Spike Trains , 2009, The Journal of Neuroscience.
[11] B. McNaughton,et al. Paradoxical Effects of External Modulation of Inhibitory Interneurons , 1997, The Journal of Neuroscience.
[12] Frances S. Chance,et al. Effects of synaptic noise and filtering on the frequency response of spiking neurons. , 2001, Physical review letters.
[13] P. Dayan,et al. Supporting Online Material Materials and Methods Som Text Figs. S1 to S9 References the Asynchronous State in Cortical Circuits , 2022 .
[14] Nicolas Brunel,et al. Fast Global Oscillations in Networks of Integrate-and-Fire Neurons with Low Firing Rates , 1999, Neural Computation.
[15] Duane Q. Nykamp,et al. A Population Density Approach That Facilitates Large-Scale Modeling of Neural Networks: Extension to Slow Inhibitory Synapses , 2001, Neural Computation.
[16] Evan S. Schaffer,et al. Inhibitory Stabilization of the Cortical Network Underlies Visual Surround Suppression , 2009, Neuron.
[17] D. Simons,et al. Circuit dynamics and coding strategies in rodent somatosensory cortex. , 2000, Journal of neurophysiology.
[18] Lawrence Sirovich,et al. The Approach of a Neuron Population Firing Rate to a New Equilibrium: An Exact Theoretical Result , 2000, Neural Computation.
[19] D. Hansel,et al. How Spike Generation Mechanisms Determine the Neuronal Response to Fluctuating Inputs , 2003, The Journal of Neuroscience.
[20] S. Ostojic. Interspike interval distributions of spiking neurons driven by fluctuating inputs. , 2011, Journal of neurophysiology.
[21] M. Mattia,et al. Population dynamics of interacting spiking neurons. , 2002, Physical review. E, Statistical, nonlinear, and soft matter physics.
[22] E J Chichilnisky,et al. Prediction and Decoding of Retinal Ganglion Cell Responses with a Probabilistic Spiking Model , 2005, The Journal of Neuroscience.
[23] Matthew T. Kaufman,et al. Cortical Preparatory Activity: Representation of Movement or First Cog in a Dynamical Machine? , 2010, Neuron.
[24] Benjamin Lindner,et al. Author's Accepted Manuscript , 2022 .
[25] G. Ermentrout,et al. Parabolic bursting in an excitable system coupled with a slow oscillation , 1986 .
[26] Kazuyuki Aihara,et al. Stochastic Synchrony of Chaos in a Pulse-Coupled Neural Network with Both Chemical and Electrical Synapses Among Inhibitory Neurons , 2008, Neural Computation.
[27] Sommers,et al. Chaos in random neural networks. , 1988, Physical review letters.
[28] Nicolas Brunel,et al. Dynamics of Sparsely Connected Networks of Excitatory and Inhibitory Spiking Neurons , 2000, Journal of Computational Neuroscience.
[29] Nicolas Brunel,et al. From Spiking Neuron Models to Linear-Nonlinear Models , 2011, PLoS Comput. Biol..
[30] M. London,et al. Sensitivity to perturbations in vivo implies high noise and suggests rate coding in cortex , 2010, Nature.
[31] Cheng Ly,et al. Population density methods for stochastic neurons with realistic synaptic kinetics: Firing rate dynamics and fast computational methods , 2006, Network.
[32] Nicolas Brunel,et al. How Noise Affects the Synchronization Properties of Recurrent Networks of Inhibitory Neurons , 2006, Neural Computation.
[33] Oren Shriki,et al. Rate Models for Conductance-Based Cortical Neuronal Networks , 2003, Neural Computation.
[34] M. J. Richardson,et al. Firing-rate response of linear and nonlinear integrate-and-fire neurons to modulated current-based and conductance-based synaptic drive. , 2007, Physical review. E, Statistical, nonlinear, and soft matter physics.
[35] Michael J. Berry,et al. The structure and precision of retinal spike trains. , 1997, Proceedings of the National Academy of Sciences of the United States of America.
[36] W. Gerstner,et al. Time structure of the activity in neural network models. , 1995, Physical review. E, Statistical physics, plasmas, fluids, and related interdisciplinary topics.