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# 6.1 Fully Connected Homogeneous Network

We study a large and homogeneous population of neurons; cf. Fig. 6.1. By homogeneous we mean that all neurons 1iN are identical and receive the same external input Iiext(t) = Iext(t). Moreover, in a homogeneous population, the interaction strength between the neurons is taken to be uniform,

 wij =  , (6.2)

where J0 is a parameter. For J0 = 0 all neurons are independent; a value J0 > 0 (J0 < 0) implies excitatory (inhibitory) all-to-all coupling. The interaction strength scales with one over the number of neurons so that the total synaptic input to each neuron remains finite in the limit of N.

Model neurons are described by formal spiking neurons as introduced in Chapter 4. In the case of leaky integrate-and-fire neurons with

 ui = - ui + R Ii(t) (6.3)

a homogeneous network implies that all neurons have the same input resistance R, the same membrane time constant , as well as identical threshold and reset values. The input current Ii takes care of both the external drive and synaptic coupling

 Ii = wij(t - tj(f)) + Iext(t) . (6.4)

Here we have assumed that each input spike generates a postsynaptic current with some generic time course (t - tj(f)). The sum on the right-hand side of (6.4) runs over all firing times of all neurons. Because of the homogeneous all-to-all coupling, the total input current is identical for all neurons. To see this, we insert Eq. (6.2) and use the definition of the population activity, Eq. (6.1). We find a total input current,

 I(t) = J0(s) A(t - s) ds + Iext(t) , (6.5)

which is independent of the neuronal index i. As an aside we note that for conductance-based synaptic input, the total input current would depend on the neuronal membrane potential which is different from one neuron to the next.

Instead of the integrate-and-fire neuron, we may also use the Spike Response Model (SRM) as the elementary unit of the population. The membrane potential of a SRM neuron is of the form

 ui(t) = (t - ) + hPSP(t|) , (6.6)

where is the most recent firing time of neuron i. The kernel (.) describes the spike and the spike after-potential while

 hPSP(t|) =  (t - , t - tj(f)) + (t - , s) Iext(t - s) ds (6.7)

is the postsynaptic potential caused by firings tj(f) of presynaptic neurons j or by external input Iext(t). The kernel models the response of the neuron to a single presynaptic input spike while is the response to a unit current pulse. In Eq. (6.7) we have already exploited Eq. (6.2) and replaced the synaptic efficacies wij by J0/N. The population theory developed in this chapter is valid for arbitrary response kernels and and for a broad variety of refractory kernels . By an appropriate choice of the kernels, we recover the integrate-and-fire model; cf. Chapter 4.2. If we suppress the t - dependency of and , we recover the simple model SRM0 from Chapter 4.2.3.

Similarly to the approach that we used for the total input current of an integrate-and-fire neuron, we can rewrite Eq. (6.7) in terms of the population activity A,

 hPSP(t|) = J0(t - , s) A(t - s) ds + (t - , s) Iext(t - s) ds . (6.8)

Thus, given the activity A(t') and the external input Iext for t' < t we can determine the potential hPSP(t|) of a neuron that has fired its last spike at . Note that we have suppressed the index i, since all neurons that have fired their last spike at have the same postsynaptic potential hPSP. As above, this is an immediate consequence of the assumption of a homogeneous network and does not require a limit of N.

In the absence of noise, the next firing time of a spiking neuron i is found from the threshold condition,

 ui(t) =     and    ui > 0 . (6.9)

In the presence of noise, the next firing time of a given neuron i cannot be predicted in a deterministic fashion. In the case of integrate-and-fire neurons with diffusive noise (stochastic spike arrival), a large noise level leads to a broad distribution of the membrane potential and indirectly to a large distribution of interspike intervals; cf. Chapter 5. In the case of spiking neurons with escape noise (noisy threshold), firing occurs probabilistically which results in a similar large distribution of interspike intervals. In the following sections, we formulate population equations for various types of spiking neuron and different types of noise. We start in the next section with a population of integrate-and-fire neurons with diffusive noise and turn then to Spike Response Model neurons.

Next: 6.2 Density Equations Up: 6. Population Equations Previous: 6. Population Equations
Gerstner and Kistler
Spiking Neuron Models. Single Neurons, Populations, Plasticity
Cambridge University Press, 2002

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