Neuron Models
- There are a lot of different models.
- There are several simple integrate and fire models (like the perceptron).
Integrate and fire neurons integrate activity from other neurons
and if it goes over the threshold, it fires.
- It's like a binary perceptron, but it functions in time, so can
fire multiple times. This is called the McCullouch Pitts neuron.
- Integration is done by combining inputs and if a neuron passes a
threshold it fires.
- You can extend this so some of the activity leaks away.
- If the neuron does not fire, it loses some of its activation;
it leaks away. The retained activity makes it easier to fire
in the next cycle.
- It can work in discrete cycles (which is the way they usually go),
or continuously.
- I extend this to fatiguing leaky integrate and fire models.
- Other examples are Boltzmann machines and Izhikevich neurons.
- These are all point models, but you can use more sophisticated
models of neurons using their shape and conductance.
- These are called compartmental models because
they break the neuron into compartments and model how the
current moves about them. They're more accurate than point models.
- A Nobel prize winning model is from Hodgkin and Huxley, who use
ion channels.