Neural Network approaches to time series prediction are briefly discussed,
and the need to find the appropriate sample rate and an appropriately sized
input window identified. Relevant theoretical results from dynamic systems
theory are briefly introduced, and heuristics for finding the appropriate
sampling rate and embedding dimension, and thence window size, are discusse
d. The method is applied to several time series and the resulting generalis
ation performance of the trained feed-forward neural network predictors is
analysed. It is shown that the heuristics can provide useful information in
defining the appropriate network architecture.