495eb68033
Signed-off-by: David Rotermund <54365609+davrot@users.noreply.github.com> |
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README.md |
DivInE-model for MT neurons
This model is also termed DivInE-model, since it describes the adaptive response properties of MT neurons by means of divisive normalization, for more detailed info see also this paper:
\tau_e \frac{dA_e(t)}{dt} = -A_e(t) + g_e\left( \frac{I(t)}{A_i(t)+\sigma} \right)
\tau_i \frac{dA_i(t)}{dt} = -A_i(t) + g_i\left( I(t) \right)
Here, g_X
are gain functions for x\in\{e,i\}
with g_X(I) = m_X(I-\theta_X)
for I>\theta_X
, and 0
otherwise, while A_e
and A_i
could be interpreted as internal activations.
Default parameters: \tau_e=10
ms, \tau_i=40
ms, \theta_{\{e,i\}}=0
, m_e=m_i=1
(nA){}^{-1}
, I=1
nA, \sigma=0.25
. From the activation A_e
, an output rate can be derived via r(t) = r_0 A_e(t)
with, let's say, r_0=100
Hz.