Efficient Computation in Networks of Spiking Neurons - Simulations and
Theory
Abstract:
One of the most prominent features of biological neural systems is that
individual neurons communicate via short electrical pulses, the so called
action potentials or spikes. In this thesis we investigate possible
mechanisms which can in principle explain how complex computations in spiking
neural networks (SNN) can be performed very fast, i. e. within a few 10
milliseconds. Some of these models are based on the assumption that relevant
information is encoded by the timing of individual spikes (temporal coding).
We will also discuss a model which is based on a population code and still is
able to perform fast complex computations. In their natural environment
biological neural systems have to process signals with a rich temporal
structure. Hence it is an interesting question how neural systems process
time series. In this context we explore possible links between biophysical
characteristics of single neurons (refractory behavior, connectivity, time
course of postsynaptic potentials) and synapses (unreliability, dynamics) on
the one hand and possible computations on times series on the other hand.
Furthermore we describe a general model of computation that exploits dynamic
synapses. This model provides a general framework for understanding how
neural systems process time-varying signals.
Reference: T. Natschlaeger.
Efficient Computation in Networks of Spiking Neurons - Simulations and
Theory.
PhD thesis, Graz University of Technology, 1999.