Kistler WM, Gerstner W. (2002). Spiking neuron models.

See more from authors: Kistler WM · Gerstner W

References and models cited by this paper
References and models that cite this paper

Arsiero M, Lüscher HR, Lundstrom BN, Giugliano M. (2007). The impact of input fluctuations on the frequency-current relationships of layer 5 pyramidal neurons in the rat medial prefrontal cortex. The Journal of neuroscience : the official journal of the Society for Neuroscience. 27 [PubMed]

Ashida G, Abe K, Funabiki K, Konishi M. (2007). Passive soma facilitates submillisecond coincidence detection in the owl's auditory system. Journal of neurophysiology. 97 [PubMed]

Badel L et al. (2008). Dynamic I-V curves are reliable predictors of naturalistic pyramidal-neuron voltage traces. Journal of neurophysiology. 99 [PubMed]

Baras D, Meir R. (2007). Reinforcement learning, spike-time-dependent plasticity, and the BCM rule. Neural computation. 19 [PubMed]

Bohte SM, Mozer MC. (2007). Reducing the variability of neural responses: a computational theory of spike-timing-dependent plasticity. Neural computation. 19 [PubMed]

Brette R. (2006). Exact simulation of integrate-and-fire models with synaptic conductances. Neural computation. 18 [PubMed]

Brette R. (2012). Computing with neural synchrony. PLoS computational biology. 8 [PubMed]

Brette R, Goodman DF. (2011). Vectorized algorithms for spiking neural network simulation. Neural computation. 23 [PubMed]

Brown E, Moehlis J, Holmes P. (2004). On the phase reduction and response dynamics of neural oscillator populations. Neural computation. 16 [PubMed]

Carrillo RR, Ros E, Barbour B, Boucheny C, Coenen O. (2007). Event-driven simulation of neural population synchronization facilitated by electrical coupling. Bio Systems. 87 [PubMed]

Casellato C et al. (2014). Adaptive robotic control driven by a versatile spiking cerebellar network. PloS one. 9 [PubMed]

Cebulla C. (2007). Asymptotic behavior and synchronizability characteristics of a class of recurrent neural networks. Neural computation. 19 [PubMed]

Clopath C, Büsing L, Vasilaki E, Gerstner W. (2010). Connectivity reflects coding: a model of voltage-based STDP with homeostasis. Nature neuroscience. 13 [PubMed]

Clopath C, Ziegler L, Vasilaki E, Büsing L, Gerstner W. (2008). Tag-trigger-consolidation: a model of early and late long-term-potentiation and depression. PLoS computational biology. 4 [PubMed]

Dangelo E, Nieus T, Bezzi M, Arleo A, Coenen O. (2005). (chapter) Modeling synaptic transmission and quantifying information transfer in the granular layer of the cerebellum Computational Intelligence and Bioinspired Systems, Proceedings. 3512

Deneve S. (2008). Bayesian spiking neurons I: inference. Neural computation. 20 [PubMed]

Destexhe A, Rudolph M. (2004). Extracting information from the power spectrum of synaptic noise. Journal of computational neuroscience. 17 [PubMed]

Doiron B, Oswald AM, Maler L. (2007). Interval coding. II. Dendrite-dependent mechanisms. Journal of neurophysiology. 97 [PubMed]

Dominguez M, Becker S, Bruce I, Read H. (2006). A spiking neuron model of cortical correlates of sensorineural hearing loss: Spontaneous firing, synchrony, and tinnitus. Neural computation. 18 [PubMed]

Du X, Ghosh BK, Ulinski P. (2005). Encoding and decoding target locations with waves in the turtle visual cortex. IEEE transactions on bio-medical engineering. 52 [PubMed]

Ernst U, Rotermund D, Pawelzik K. (2007). Efficient computation based on stochastic spikes. Neural computation. 19 [PubMed]

Esposito U, Giugliano M, van Rossum M, Vasilaki E. (2014). Measuring symmetry, asymmetry and randomness in neural network connectivity. PloS one. 9 [PubMed]

Feng J, Brown D. (2004). Decoding input signals in time domain--a model approach. Journal of computational neuroscience. 16 [PubMed]

Florian RV. (2007). Reinforcement learning through modulation of spike-timing-dependent synaptic plasticity. Neural computation. 19 [PubMed]

Garrido JA, Ros E, D'Angelo E. (2013). Spike timing regulation on the millisecond scale by distributed synaptic plasticity at the cerebellum input stage: a simulation study. Frontiers in computational neuroscience. 7 [PubMed]

Gerstner W, Kistler WM. (2002). Mathematical formulations of Hebbian learning. Biological cybernetics. 87 [PubMed]

Goldwyn JH, Rubinstein JT, Shea-Brown E. (2012). A point process framework for modeling electrical stimulation of the auditory nerve. Journal of neurophysiology. 108 [PubMed]

Graf ABA, Wichmann FA, Bulthoff HH, Scholkopf B. (2005). Classification of Faces in Man and Machine Neural Comput. 18

Guerrero-Rivera R, Morrison A, Diesmann M, Pearce TC. (2006). Programmable logic construction kits for hyper-real-time neuronal modeling. Neural computation. 18 [PubMed]

Guyonneau R, VanRullen R, Thorpe SJ. (2005). Neurons tune to the earliest spikes through STDP. Neural computation. 17 [PubMed]

Hass J, Hertäg L, Durstewitz D. (2016). A Detailed Data-Driven Network Model of Prefrontal Cortex Reproduces Key Features of In Vivo Activity. PLoS computational biology. 12 [PubMed]

Hong S, Agüera y Arcas B, Fairhall AL. (2007). Single neuron computation: from dynamical system to feature detector. Neural computation. 19 [PubMed]

Huys QJ, Ahrens MB, Paninski L. (2006). Efficient estimation of detailed single-neuron models. Journal of neurophysiology. 96 [PubMed]

Huys QJ, Paninski L. (2009). Smoothing of, and parameter estimation from, noisy biophysical recordings. PLoS computational biology. 5 [PubMed]

Izhikevich EM. (2004). Which model to use for cortical spiking neurons? IEEE transactions on neural networks. 15 [PubMed]

Jeong HY, Gutkin B. (2007). Synchrony of neuronal oscillations controlled by GABAergic reversal potentials. Neural computation. 19 [PubMed]

Jiang N, Englehart KB, Parker PA. (2007). A simulation method for the firing sequences of motor units. Journal of electromyography and kinesiology : official journal of the International Society of Electrophysiological Kinesiology. 17 [PubMed]

Jolivet R, Gerstner W. (2004). Predicting spike times of a detailed conductance-based neuron model driven by stochastic spike arrival. Journal of physiology, Paris. 98 [PubMed]

Jolivet R et al. (2008). A benchmark test for a quantitative assessment of simple neuron models. Journal of neuroscience methods. 169 [PubMed]

Jolivet R, Lewis TJ, Gerstner W. (2004). Generalized integrate-and-fire models of neuronal activity approximate spike trains of a detailed model to a high degree of accuracy. Journal of neurophysiology. 92 [PubMed]

Jolivet R, Rauch A, Lüscher HR, Gerstner W. (2006). Predicting spike timing of neocortical pyramidal neurons by simple threshold models. Journal of computational neuroscience. 21 [PubMed]

Kanamaru T. (2006). Analysis of synchronization between two modules of pulse neural networks with excitatory and inhibitory connections. Neural computation. 18 [PubMed]

Kanamaru T, Sekine M. (2005). Synchronized firings in the networks of class 1 excitable neurons with excitatory and inhibitory connections and their dependences on the forms of interactions. Neural computation. 17 [PubMed]

Kobayashi R, Tsubo Y, Shinomoto S. (2009). Made-to-order spiking neuron model equipped with a multi-timescale adaptive threshold. Frontiers in computational neuroscience. 3 [PubMed]

Kumar A, Schrader S, Aertsen A, Rotter S. (2008). The high-conductance state of cortical networks. Neural computation. 20 [PubMed]

Köndgen H et al. (2008). The dynamical response properties of neocortical neurons to temporally modulated noisy inputs in vitro. Cerebral cortex (New York, N.Y. : 1991). 18 [PubMed]

Laing CR. (2006). On the application of "equation-free modelling" to neural systems. Journal of computational neuroscience. 20 [PubMed]

Lansky P, Sanda P, He J. (2006). The parameters of the stochastic leaky integrate-and-fire neuronal model. Journal of computational neuroscience. 21 [PubMed]

Legenstein R, Maass W. (2011). Branch-specific plasticity enables self-organization of nonlinear computation in single neurons. The Journal of neuroscience : the official journal of the Society for Neuroscience. 31 [PubMed]

Legenstein R, Naeger C, Maass W. (2005). What can a neuron learn with spike-timing-dependent plasticity? Neural computation. 17 [PubMed]

Legenstein R, Pecevski D, Maass W. (2008). A learning theory for reward-modulated spike-timing-dependent plasticity with application to biofeedback. PLoS computational biology. 4 [PubMed]

Li X, Ascoli GA. (2008). Effects of synaptic synchrony on the neuronal input-output relationship. Neural computation. 20 [PubMed]

Lovelace JJ, Cios KJ. (2008). A very simple spiking neuron model that allows for modeling of large, complex systems. Neural computation. 20 [PubMed]

Lánský P, Greenwood PE. (2005). Optimal signal estimation in neuronal models. Neural computation. 17 [PubMed]

Lánský P, Rodriguez R, Sacerdote L. (2004). Mean instantaneous firing frequency is always higher than the firing rate. Neural computation. 16 [PubMed]

Ma J, Wu J. (2007). Multistability in spiking neuron models of delayed recurrent inhibitory loops. Neural computation. 19 [PubMed]

Masquelier T, Deco G. (2013). Network bursting dynamics in excitatory cortical neuron cultures results from the combination of different adaptive mechanisms. PloS one. 8 [PubMed]

Masquelier T, Hugues E, Deco G, Thorpe SJ. (2009). Oscillations, phase-of-firing coding, and spike timing-dependent plasticity: an efficient learning scheme. The Journal of neuroscience : the official journal of the Society for Neuroscience. 29 [PubMed]

Masuda N. (2005). Simultaneous Rate-Synchrony Codes in Populations of Spiking Neurons Neural Comput. 18

Masuda N, Aihara K. (2004). Self-organizing dual coding based on spike-time-dependent plasticity. Neural computation. 16 [PubMed]

Masuda N, Doiron B, Longtin A, Aihara K. (2005). Coding of temporally varying signals in networks of spiking neurons with global delayed feedback. Neural computation. 17 [PubMed]

Masuda N, Kori H. (2007). Formation of feedforward networks and frequency synchrony by spike-timing-dependent plasticity. Journal of computational neuroscience. 22 [PubMed]

Mondal A, Upadhyay RK. (2018). Diverse neuronal responses of a fractional-order Izhikevich model: journey from chattering to fast spiking Nonlinear Dynamics. 91

Muller E, Buesing L, Schemmel J, Meier K. (2007). Spike-frequency adapting neural ensembles: beyond mean adaptation and renewal theories. Neural computation. 19 [PubMed]

Muresan RC, Savin C. (2007). Resonance or integration? Self-sustained dynamics and excitability of neural microcircuits. Journal of neurophysiology. 97 [PubMed]

Nakano T, Otsuka M, Yoshimoto J, Doya K. (2015). A spiking neural network model of model-free reinforcement learning with high-dimensional sensory input and perceptual ambiguity. PloS one. 10 [PubMed]

Nicola W, Campbell SA. (2013). Bifurcations of large networks of two-dimensional integrate and fire neurons. Journal of computational neuroscience. 35 [PubMed]

Palyanov A, Khayrulin S, Larson SD, Dibert A. (2011). Towards a virtual C. elegans: a framework for simulation and visualization of the neuromuscular system in a 3D physical environment. In silico biology. 11 [PubMed]

Paninski L. (2006). The most likely voltage path and large deviations approximations for integrate-and-fire neurons. Journal of computational neuroscience. 21 [PubMed]

Paninski L. (2006). The spike-triggered average of the integrate-and-fire cell driven by gaussian white noise. Neural computation. 18 [PubMed]

Paninski L, Pillow JW, Simoncelli EP. (2004). Maximum likelihood estimation of a stochastic integrate-and-fire neural encoding model. Neural computation. 16 [PubMed]

Pfeuty B, Mato G, Golomb D, Hansel D. (2005). The combined effects of inhibitory and electrical synapses in synchrony. Neural computation. 17 [PubMed]

Richmond P, Buesing L, Giugliano M, Vasilaki E. (2011). Democratic population decisions result in robust policy-gradient learning: a parametric study with GPU simulations. PloS one. 6 [PubMed]

Ros E, Carrillo R, Ortigosa EM, Barbour B, Agís R. (2006). Event-driven simulation scheme for spiking neural networks using lookup tables to characterize neuronal dynamics. Neural computation. 18 [PubMed]

Rudolph M, Destexhe A. (2006). Analytical integrate-and-fire neuron models with conductance-based dynamics for event-driven simulation strategies. Neural computation. 18 [PubMed]

Sautois B, Soffe SR, Li WC, Roberts A. (2007). Role of type-specific neuron properties in a spinal cord motor network. Journal of computational neuroscience. 23 [PubMed]

Soula H, Chow CC. (2007). Stochastic dynamics of a finite-size spiking neural network. Neural computation. 19 [PubMed]

Spain WJ, Fairhall AL, Lundstrom BN, Famulare M, Sorensen LB. (2009). Sensitivity of firing rate to input fluctuations depends on time scale separation between fast and slow variables in single neurons J Comput Neurosci. in press

Sterratt DC, Graham B, Gillies A, Willshaw D. (2011). Principles of Computational Modelling in Neuroscience, Cambridge University Press.

Síma J, Sgall J. (2005). On the nonlearnability of a single spiking neuron. Neural computation. 17 [PubMed]

Tikidji-Hamburyan RA, El-Ghazawi TA, Narayana V, Bozkus Z. (2017). Software for Brain Network Simulations: A Comparative Study Front. Neuroinform..

Tonnelier A. (2005). Categorization of neural excitability using threshold models. Neural computation. 17 [PubMed]

Tonnelier A, Belmabrouk H, Martinez D. (2007). Event-driven simulations of nonlinear integrate-and-fire neurons. Neural computation. 19 [PubMed]

Touboul J, Brette R. (2008). Dynamics and bifurcations of the adaptive exponential integrate-and-fire model. Biological cybernetics. 99 [PubMed]

Toyoizumi T, Pfister JP, Aihara K, Gerstner W. (2007). Optimality model of unsupervised spike-timing-dependent plasticity: synaptic memory and weight distribution. Neural computation. 19 [PubMed]

Troyer TW. (2006). Factors affecting phase synchronization in integrate-and-fire oscillators. Journal of computational neuroscience. 20 [PubMed]

Vasalou C, Henson MA. (2010). A multiscale model to investigate circadian rhythmicity of pacemaker neurons in the suprachiasmatic nucleus. PLoS computational biology. 6 [PubMed]

Vich C, Berg RW, Guillamon A, Ditlevsen S. (2017). Estimation of Synaptic Conductances in Presence of Nonlinear Effects Caused by Subthreshold Ionic Currents. Frontiers in computational neuroscience. 11 [PubMed]

Voigt T, Herzog A, Michaelis B, Kube K, De_lima AD. (2007). Displaced strategies optimize connectivity in neocortical networks Neurocomputing. 70

Woo B, Shin D, Yang D, Choi J. (2005). Reduced model and simulation of neuron with passive dendritic cable: an eigenfunction expansion approach. Journal of computational neuroscience. 19 [PubMed]

Yu Q, Tang H, Hu J, Tan KC. (2017). Precise-Spike-Driven Synaptic Plasticity for Hetero Association of Spatiotemporal Spike Patterns Neuromorphic Cognitive Systems: A Learning and Memory Centered Approach.

Yvon C, Czarnecki A, Streit J. (2007). Riluzole-induced oscillations in spinal networks. Journal of neurophysiology. 97 [PubMed]

Zannone S, Brzosko Z, Paulsen O, Clopath C. (2018). Acetylcholine-modulated plasticity in reward-driven navigation: a computational study. Scientific reports. 8 [PubMed]

Zhang X, Carney LH. (2005). Response properties of an integrate-and-fire model that receives subthreshold inputs. Neural computation. 17 [PubMed]

Świetlik D, Białowąs J, Kusiak A, Cichońska D. (2018). Memory and forgetting processes with the firing neuron model. Folia morphologica. 77 [PubMed]

This website requires cookies and limited processing of your personal data in order to function. By continuing to browse or otherwise use this site, you are agreeing to this use. See our Privacy policy and how to cite and terms of use.