layout | title | date | author | summary | references | weight | |||
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notes |
22.interacting populations and continuum models |
2016-10-29 |
ErbB4 |
network of networks and continuum network |
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22 |
Every heterogeneous network could be viewed as a combination of different homogeneous network, or the interaction among different populations. The simplest case is the balanced random network: with excitatory and inhibitory neurons.
Let's look at a fully connected network with excitatory and inhibitory neurons. Excitatory neurons belong to population
So the activity of population
So for each single neuron in population
$$ \begin{align} h_i(t|\hat{t_i}) & = \sum_j\sum_fw_{ij}\eta(t-\hat{t_i},t-t_j^{(f)})\ & = \sum_mJ_{nm}\int_0^{\infty}\eta(t-\hat{t_i},s)\sum_{j\in \Gamma_m}\sum_f\frac{\delta(t-t_j^{f}-s)}{N_m}\ & = \sum_mJ_{nm}\int_0^{\infty}\eta(t-\hat{t},s)A_m(t-s)ds
\end{align} $$
That is just an example population with SRM0 neuron model. For a general population, the population activity evolution could be rewrite as:
When the network reaches stationary state, the activity is stable, so the inputs from one sub-population (
So the inputs could be viewed as
with
we have
Features: the auditory cortex is a good example, with neurons organized along an axis with continuously changing preferred frequency.
So the principle of analyzing this network is \emph{binning} the cortex with a binsize
Then this network is a special case of interacting populations, with