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0 Chapter 3: Simplified neuron and population models Fundamentals of Computational Neuroscience Dec 09
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1 The leaky integrate-and-fire neuron
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2 IF simulation
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3 IF gain function The inverse of the first passage time defines the firing rate:
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4 IF resistance to noise
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5 The Izhikevich neuron +
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6 The McCulloch-Pitts neuron
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7 The firing rate hypothesis Edgar Adrian The Nobel Prize in Physiology or Medicine 1932
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8 Counter example: correlation code (?) From DeCharms and Merzenich 1996
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9 Integrator or coincidence detector? From Buracas et al. 1998
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10 Population model Temporal averagingPopulation averaging
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11 Population dynamics For slow varying input (adiabatic limit), when all nodes do practically the same, same input, etc (Wilson and Cowan,1972): Gain function:
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12 Other gain functions
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13 Fast population response
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14 Further readings
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