The Computational Theory of Neural Networks (2000)
by
Jiri Sima
BibTeX
@MISC{Sima00thecomputational,
author = {Jiri Sima},
title = {The Computational Theory of Neural Networks},
year = {2000}
}
OpenURL
Abstract
In the present paper a detailed taxonomy of neural network models with various restrictions is presented with respect to their computational properties. The criteria of classification include e.g. feedforward and recurrent architectures, discrete and continuous time, binary and analog states, symmetric and asymmetric weights, finite size and infinite families of networks, deterministic and probabilistic models, etc. The underlying results concerning the computational power of perceptron, RBF, winner-take-all, and spiking neural networks are briey surveyed and completed by relevant references.







