Linking structure and activity in nonlinear spiking networks
暂无分享,去创建一个
[1] Moshe Abeles,et al. Corticonics: Neural Circuits of Cerebral Cortex , 1991 .
[2] R C Reid,et al. Divergence and reconvergence: multielectrode analysis of feedforward connections in the visual system. , 2001, Progress in brain research.
[3] Eric Shea-Brown,et al. Local paths to global coherence: cutting networks down to size. , 2012, Physical review. E, Statistical, nonlinear, and soft matter physics.
[4] Sompolinsky,et al. Theory of correlations in stochastic neural networks. , 1994, Physical review. E, Statistical physics, plasmas, fluids, and related interdisciplinary topics.
[5] M. Abeles. Role of the cortical neuron: integrator or coincidence detector? , 1982, Israel journal of medical sciences.
[6] Eric Shea-Brown,et al. Stimulus-Dependent Correlations and Population Codes , 2008, Neural Computation.
[7] Tatyana O Sharpee,et al. Low-dimensional dynamics of structured random networks. , 2015, Physical review. E.
[8] Michael A Buice,et al. Beyond mean field theory: statistical field theory for neural networks , 2013, Journal of statistical mechanics.
[9] D. Brillinger. Estimation of the Second-Order Intensities of a Bivariate Stationary Point Process , 1976 .
[10] E. Bienenstock,et al. Theory for the development of neuron selectivity: orientation specificity and binocular interaction in visual cortex , 1982, The Journal of neuroscience : the official journal of the Society for Neuroscience.
[11] T. Sejnowski,et al. Storing covariance with nonlinearly interacting neurons , 1977, Journal of mathematical biology.
[12] G. Biroli,et al. Dynamics of interacting particle systems: stochastic process and field theory , 2007, 0709.1325.
[13] Paul C. Martin,et al. Statistical Dynamics of Classical Systems , 1973 .
[14] Sen Song,et al. Highly Nonrandom Features of Synaptic Connectivity in Local Cortical Circuits , 2005, PLoS biology.
[15] A. Pouget,et al. Tuning curve sharpening for orientation selectivity: coding efficiency and the impact of correlations , 2004, Nature Neuroscience.
[16] Nicholas J. Priebe,et al. Direction Selectivity of Excitation and Inhibition in Simple Cells of the Cat Primary Visual Cortex , 2005, Neuron.
[17] A. Hawkes,et al. A cluster process representation of a self-exciting process , 1974, Journal of Applied Probability.
[18] Brent Doiron,et al. Oscillatory activity in electrosensory neurons increases with the spatial correlation of the stochastic input stimulus. , 2004, Physical review letters.
[19] A. Hawkes. Spectra of some self-exciting and mutually exciting point processes , 1971 .
[20] Eric Shea-Brown,et al. Motif statistics and spike correlations in neuronal networks , 2012, BMC Neuroscience.
[21] David Hansel,et al. Asynchronous Rate Chaos in Spiking Neuronal Circuits , 2015, bioRxiv.
[22] D. R. Muir,et al. Functional organization of excitatory synaptic strength in primary visual cortex , 2015, Nature.
[23] B. Sakmann,et al. Cortex Is Driven by Weak but Synchronously Active Thalamocortical Synapses , 2006, Science.
[24] M. Mattia,et al. Population dynamics of interacting spiking neurons. , 2002, Physical review. E, Statistical, nonlinear, and soft matter physics.
[25] Brent Doiron,et al. Self-Organization of Microcircuits in Networks of Spiking Neurons with Plastic Synapses , 2015, PLoS Comput. Biol..
[26] Theoden I. Netoff,et al. Synchronization from Second Order Network Connectivity Statistics , 2011, Front. Comput. Neurosci..
[27] A. Pouget,et al. Neural correlations, population coding and computation , 2006, Nature Reviews Neuroscience.
[28] E. Callaway,et al. Excitatory cortical neurons form fine-scale functional networks , 2005, Nature.
[29] M. Doi. Second quantization representation for classical many-particle system , 1976 .
[30] Haim Sompolinsky,et al. Chaotic Balanced State in a Model of Cortical Circuits , 1998, Neural Computation.
[31] Brent Doiron,et al. The mechanics of state-dependent neural correlations , 2016, Nature Neuroscience.
[32] Nicholas J. Priebe,et al. Mechanisms underlying cross-orientation suppression in cat visual cortex , 2006, Nature Neuroscience.
[33] J. Cowan,et al. Field-theoretic approach to fluctuation effects in neural networks. , 2007, Physical review. E, Statistical, nonlinear, and soft matter physics.
[34] Rava Azeredo da Silveira,et al. Structures of Neural Correlation and How They Favor Coding , 2016, Neuron.
[35] H. Sompolinsky,et al. Chaos in Neuronal Networks with Balanced Excitatory and Inhibitory Activity , 1996, Science.
[36] R. Reid,et al. Paired-spike interactions and synaptic efficacy of retinal inputs to the thalamus , 1998, Nature.
[37] Jacques Bourg,et al. Multilaminar networks of cortical neurons integrate common inputs from sensory thalamus , 2016, Nature Neuroscience.
[38] Wulfram Gerstner,et al. Neuronal Dynamics: From Single Neurons To Networks And Models Of Cognition , 2014 .
[39] Maxwell H. Turner,et al. Direction-Selective Circuits Shape Noise to Ensure a Precise Population Code , 2016, Neuron.
[40] Ad Aertsen,et al. Stable propagation of synchronous spiking in cortical neural networks , 1999, Nature.
[41] Evan S. Schaffer,et al. Inhibitory Stabilization of the Cortical Network Underlies Visual Surround Suppression , 2009, Neuron.
[42] Stefan Rotter,et al. Cumulants of Hawkes point processes. , 2014, Physical review. E, Statistical, nonlinear, and soft matter physics.
[43] John H R Maunsell,et al. Cortical neural populations can guide behavior by integrating inputs linearly, independent of synchrony , 2013, Proceedings of the National Academy of Sciences.
[44] W. Gerstner,et al. Triplets of Spikes in a Model of Spike Timing-Dependent Plasticity , 2006, The Journal of Neuroscience.
[45] Stefan Rotter,et al. Interplay between Graph Topology and Correlations of Third Order in Spiking Neuronal Networks , 2016, PLoS Comput. Biol..
[46] M. Doi. Stochastic theory of diffusion-controlled reaction , 1976 .
[47] J. Elgin. The Fokker-Planck Equation: Methods of Solution and Applications , 1984 .
[48] Nicolas Brunel,et al. How Connectivity, Background Activity, and Synaptic Properties Shape the Cross-Correlation between Spike Trains , 2009, The Journal of Neuroscience.
[49] Yoram Burak,et al. Shaping Neural Circuits by High Order Synaptic Interactions , 2016, PLoS Comput. Biol..
[50] D. Heeger. Normalization of cell responses in cat striate cortex , 1992, Visual Neuroscience.
[51] K. Miller,et al. Neural noise can explain expansive, power-law nonlinearities in neural response functions. , 2002, Journal of neurophysiology.
[52] H. Risken. Fokker-Planck Equation , 1996 .
[53] A. Pouget,et al. Information-limiting correlations , 2014, Nature Neuroscience.
[54] U. Täuber. Field-Theory Approaches to Nonequilibrium Dynamics , 2007 .
[55] P. Brémaud,et al. STABILITY OF NONLINEAR HAWKES PROCESSES , 1996 .
[56] Francesca Mastrogiuseppe,et al. Intrinsically-generated fluctuating activity in excitatory-inhibitory networks , 2016, PLoS Comput. Biol..
[57] Nicolas Brunel,et al. Dynamics of Networks of Excitatory and Inhibitory Neurons in Response to Time-Dependent Inputs , 2011, Front. Comput. Neurosci..
[58] Emery N. Brown,et al. Analysis of Neural Data , 2014 .
[59] Alex Roxin,et al. The Role of Degree Distribution in Shaping the Dynamics in Networks of Sparsely Connected Spiking Neurons , 2011, Front. Comput. Neurosci..
[60] Eric Shea-Brown,et al. Impact of Network Structure and Cellular Response on Spike Time Correlations , 2011, PLoS Comput. Biol..
[61] Brett J. Graham,et al. Anatomy and function of an excitatory network in the visual cortex , 2016, Nature.
[62] Wulfram Gerstner,et al. A neuronal learning rule for sub-millisecond temporal coding , 1996, Nature.
[63] Daniel B. Rubin,et al. The Stabilized Supralinear Network: A Unifying Circuit Motif Underlying Multi-Input Integration in Sensory Cortex , 2015, Neuron.
[64] Srdjan Ostojic,et al. Two types of asynchronous activity in networks of excitatory and inhibitory spiking neurons , 2014, Nature Neuroscience.
[65] E. Callaway,et al. Fine-scale specificity of cortical networks depends on inhibitory cell type and connectivity , 2005, Nature Neuroscience.
[66] Nicolas Brunel,et al. Dynamics of the Firing Probability of Noisy Integrate-and-Fire Neurons , 2002, Neural Computation.
[67] Christof Koch,et al. The Influence of Synaptic Weight Distribution on Neuronal Population Dynamics , 2013, PLoS Comput. Biol..
[68] Michael A. Buice,et al. Path Integral Methods for Stochastic Differential Equations , 2015, Journal of mathematical neuroscience.
[69] Stefan Rotter,et al. How Structure Determines Correlations in Neuronal Networks , 2011, PLoS Comput. Biol..
[70] H. Sompolinsky,et al. Transition to chaos in random neuronal networks , 2015, 1508.06486.
[71] Marcel Abendroth,et al. Quantum Field Theory And Critical Phenomena , 2016 .
[72] D. Sornette,et al. Generating functions and stability study of multivariate self-excited epidemic processes , 2011, 1101.5564.
[73] A. Aertsen,et al. Spiking activity propagation in neuronal networks: reconciling different perspectives on neural coding , 2010, Nature Reviews Neuroscience.
[74] Yu Hu,et al. The Sign Rule and Beyond: Boundary Effects, Flexibility, and Noise Correlations in Neural Population Codes , 2013, PLoS Comput. Biol..
[75] Merav Stern,et al. Transition to chaos in random networks with cell-type-specific connectivity. , 2014, Physical review letters.
[76] Ohira,et al. Master-equation approach to stochastic neurodynamics. , 1993, Physical review. E, Statistical physics, plasmas, fluids, and related interdisciplinary topics.
[77] Kenneth D. Miller,et al. Analysis of the Stabilized Supralinear Network , 2012, Neural Computation.
[78] J. Macke,et al. Neural population coding: combining insights from microscopic and mass signals , 2015, Trends in Cognitive Sciences.
[79] L. Peliti. Path integral approach to birth-death processes on a lattice , 1985 .
[80] J. Cardy,et al. Non-Equilibrium Statistical Mechanics and Turbulence , 2009 .
[81] A. Reyes. Synchrony-dependent propagation of firing rate in iteratively constructed networks in vitro , 2003, Nature Neuroscience.
[82] Thomas K. Berger,et al. A synaptic organizing principle for cortical neuronal groups , 2011, Proceedings of the National Academy of Sciences.
[83] Paul C. Bressloff,et al. Stochastic Neural Field Theory and the System-Size Expansion , 2009, SIAM J. Appl. Math..
[84] B. McNaughton,et al. Paradoxical Effects of External Modulation of Inhibitory Interneurons , 1997, The Journal of Neuroscience.
[85] Nicholas J. Priebe,et al. The contribution of spike threshold to the dichotomy of cortical simple and complex cells , 2004, Nature Neuroscience.
[86] P. Dayan,et al. Supporting Online Material Materials and Methods Som Text Figs. S1 to S9 References the Asynchronous State in Cortical Circuits , 2022 .
[87] Jaime de la Rocha,et al. Supplementary Information for the article ‘ Correlation between neural spike trains increases with firing rate ’ , 2007 .
[88] Paul C. Bressloff,et al. Path-Integral Methods for Analyzing the Effects of Fluctuations in Stochastic Hybrid Neural Networks , 2015, The Journal of Mathematical Neuroscience (JMN).
[89] T. Sejnowski,et al. Impact of Correlated Synaptic Input on Output Firing Rate and Variability in Simple Neuronal Models , 2000, The Journal of Neuroscience.
[90] Brent Doiron,et al. Inhibitory stabilization and visual coding in cortical circuits with multiple interneuron subtypes. , 2016, Journal of neurophysiology.
[91] Michael A. Buice,et al. Systematic Fluctuation Expansion for Neural Network Activity Equations , 2009, Neural Computation.
[92] Sommers,et al. Chaos in random neural networks. , 1988, Physical review letters.
[93] Nicolas Brunel,et al. Dynamics of Sparsely Connected Networks of Excitatory and Inhibitory Spiking Neurons , 2000, Journal of Computational Neuroscience.