Survey
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
* Your assessment is very important for improving the workof artificial intelligence, which forms the content of this project
Hansel D. & Sompolinsky H., Chaos and synchrony in a model of a hypercolumn in visual cortex, J. Comput. Neurosc. 3:7-34, 1996. Ben-Yshai R., Hansel D. & Sompolinsky H. Traveling waves and processing of weakly tuned inputs in cortical module. J. Comp. Neurosci. 4:57-77, 1997. Hansel D. & Sompolinsky H. Modeling feature selectivity in local cortical circuits. In Methods in Neuronal Modeling. From Synapses to Networks, C. Koch and I. Segev (Eds), second edition. MIT Press, Cambridge, MA., 1998. D. Hansel & G. Mato Existence and stability of persistent activity in large neuronal networks. Phys. Rev. Lett. 86: 4175-4178, 2001. D. Hansel & G. Mato. Asynchronous states and the emergence of synchrony in large networks of interacting excitatory and inhibitory neurons. Neural Comput. 15: 1-56, 2003. N. Brunel & D. Hansel, How noise affects the synchronization properties of recurrent networks of inhibitory neurons. Neural Computation, 18: 1066-110, 2006. A. Roxin, D. Hansel & N. Brunel, The role of delays in shaping spatio-temporal dynamics of neuronal activity in large networks, Phys. Rev. Lett. 94:238103, 2005. A. Roxin, N. Brunel & D. Hansel, Rate models with delays and the dynamics of large networks of spiking neurons. Prog. Theor. Physics. 161: 66-85, 2006. D. Battaglia, N. Brunel & D. Hansel Temporal decorrelation of collective oscillations in neural networks with local inhibition and long-range excitation. Phys Rev Lett. 2007 99:238106. Epub 2007 Dec 7.