Publication Date:
2004
abstract:
An extension of Cellular Genetic Programming for data
classification with the boosting technique is presented and a
comparison with the bagging-like majority voting approach is
performed. The method is able to deal with large data sets that do
not fit in main memory since each classifier is trained on a
subset of the overall training data. Experiments showed that, by
using a sample of reasonable size, the extension with these voting
algorithms enhances classification accuracy at a much lower
computational cost.
Iris type:
01.01 Articolo in rivista