Senn W, Fusi S. (2005). Learning only when necessary: better memories of correlated patterns in networks with bounded synapses. Neural computation. 17 [PubMed]

See more from authors: Senn W · Fusi S

References and models cited by this paper

Amit DJ, Brunel N. (1997). Model of global spontaneous activity and local structured activity during delay periods in the cerebral cortex. Cerebral cortex (New York, N.Y. : 1991). 7 [PubMed]

Amit DJ, Fusi S. (1992). Constraints on learning in dynamic synapses Network. 3

Amit DJ, Fusi S. (1994). Learning in neural networks with material synapses Neural Comput. 6

Amit DJ, Mongillo G. (2003). Spike-driven synaptic dynamics generating working memory states. Neural computation. 15 [PubMed]

Amit DJ, Wong KYM, Campell C. (1989). Perceptron learning with sign-constrained weights J Phys A Math Gen. 22

Amit Y, Mascaro M. (2001). Attractor networks for shape recognition. Neural computation. 13 [PubMed]

Amitai Y et al. (2002). The spatial dimensions of electrically coupled networks of interneurons in the neocortex. The Journal of neuroscience : the official journal of the Society for Neuroscience. 22 [PubMed]

Arbib M. (1987). Brains, machines, and mathematics.

Block H. (1962). The perceptron: A model for brain functioning Rev Mod Phys. 34

Braitenberg V, Schuz A. (1991). Anatomy of the Cortex: Statistics and Geometry.

Brunel N, Carusi F, Fusi S. (1998). Slow stochastic Hebbian learning of classes of stimuli in a recurrent neural network. Network (Bristol, England). 9 [PubMed]

Chen K, Jayaprakash C, Krishna-Murthy HR. (1987). Spatial correlations around a Kondo impurity. Physical review letters. 58 [PubMed]

Cho K, Aggleton JP, Brown MW, Bashir ZI. (2001). An experimental test of the role of postsynaptic calcium levels in determining synaptic strength using perirhinal cortex of rat. The Journal of physiology. 532 [PubMed]

Cover T. (1965). Geometric and statistical properties of systems of linear in-equalities with applications in pattern recognition IEEE Tran Elect Comput. 14

Desai NS, Cudmore RH, Nelson SB, Turrigiano GG. (2002). Critical periods for experience-dependent synaptic scaling in visual cortex. Nature neuroscience. 5 [PubMed]

Erickson CA, Desimone R. (1999). Responses of macaque perirhinal neurons during and after visual stimulus association learning. The Journal of neuroscience : the official journal of the Society for Neuroscience. 19 [PubMed]

Fiorillo CD, Tobler PN, Schultz W. (2003). Discrete coding of reward probability and uncertainty by dopamine neurons. Science (New York, N.Y.). 299 [PubMed]

Fusi S. (1995). Prototype extraction in material attractor neural networks with stochastic dynamic learning Proceedings of SPIE 95, Applications and Science of Artificial Neural Networks. 2

Fusi S. (2002). Hebbian spike-driven synaptic plasticity for learning patterns of mean firing rates. Biological cybernetics. 87 [PubMed]

Fusi S. (2003). Spike-driven synaptic plasticity for learning correlated patterns of mean firing rates. Reviews in the neurosciences. 14 [PubMed]

Fusi S, Annunziato M, Badoni D, Salamon A, Amit DJ. (2000). Spike-driven synaptic plasticity: theory, simulation, VLSI implementation. Neural computation. 12 [PubMed]

Fusi S, Drew PJ, Abbott LF. (2005). Cascade models of synaptically stored memories. Neuron. 45 [PubMed]

Hertz J, Krogh A, Palmer RG. (1991). Introduction to the Theory of Neural Computation..

Kinzel W, Opper M, Kohler H, Diederich S. (1990). Learning algorithm for a neural network with binary synapses Z Phys B-condensed Matter. 78

Minsky M. (1969). Perceptrons.

Miyashita Y. (1993). Inferior temporal cortex: where visual perception meets memory. Annual review of neuroscience. 16 [PubMed]

Parisi G. (1986). A memory which forgets J Phys Math Gen A. 19

Rainer G, Lee H, Logothetis NK. (2004). The effect of learning on the function of monkey extrastriate visual cortex. PLoS biology. 2 [PubMed]

Rosenblatt F. (1962). Principles Of Neurodynamics.

Rubin J, Lee DD, Sompolinsky H. (2001). Equilibrium properties of temporally asymmetric Hebbian plasticity. Physical review letters. 86 [PubMed]

Rumsey CC, Abbott LF. (2004). Equalization of synaptic efficacy by activity- and timing-dependent synaptic plasticity. Journal of neurophysiology. 91 [PubMed]

Senn W, Fusi S. (2004). Slow stochastic learning with global inhibition: A biological solution to the binary perceptron problem Neurocomputing. 58

Senn W, Fusi S. (2005). Convergence of stochastic learning in perceptrons with binary synapses. Physical review. E, Statistical, nonlinear, and soft matter physics. 71 [PubMed]

Sompolinsky H. (1987). The theory of neural networks: The Hebb rule and beyond Heidelberg Colloquium on Glassy Dynamics.

Tsodyks M. (1990). Associative memory in neural networks with binary synapses Mod Phys Lett. B4

Yakovlev V, Fusi S, Berman E, Zohary E. (1998). Inter-trial neuronal activity in inferior temporal cortex: a putative vehicle to generate long-term visual associations. Nature neuroscience. 1 [PubMed]

van Rossum MC, Bi GQ, Turrigiano GG. (2000). Stable Hebbian learning from spike timing-dependent plasticity. The Journal of neuroscience : the official journal of the Society for Neuroscience. 20 [PubMed]

van Vreeswijk C, Sompolinsky H. (1996). Chaos in neuronal networks with balanced excitatory and inhibitory activity. Science (New York, N.Y.). 274 [PubMed]

References and models that cite this paper

Brader JM, Senn W, Fusi S. (2007). Learning real-world stimuli in a neural network with spike-driven synaptic dynamics. Neural computation. 19 [PubMed]

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