Publication Date:
1991
abstract:
The comparison between parallel trials and single search in supervised learning
is approached by introducing an appropriate formalism based on random variables
theory. The fundamental role played by the probability P(t) that an optimization
algorithm converges in the interval [0,t] is thus emphasized.
The work is divided in two parts: in the first one some basic theorems are
shown and the general problem is reduced in complexity. Afterwards, examples of
behaviours for P(t) are examined and analysis is made for three general classes of
functions.
In the second part parallel trials and single search are compared for three optimization
algorithms: pure random search, grid method and random walk.
Iris type:
04.01 Contributo in Atti di convegno
List of contributors:
Muselli, Marco
Book title:
2nd International Conference on Artificial Neural Networks
Published in: