A method and system for training a computer classification system which can
be defined by a network of a number of n-tuples or Look Up Tables (LUTs),
with each n-tuple or LUT including a number of rows corresponding to at
least a subset of possible classes and further including a number of
columns being addressed by signals or elements of sampled training input
data examples, each column being defined by a vector having cells with
values, wherein the column vector cell values are determined based on one
or more training sets of input data examples for different classes so that
at least part of the cells comprise or point to information based on the
number of times the corresponding cell address is sample from one or more
sets of training input examples, and weight cell values are determined,
corresponding to one or more column vector cells being addressed or
sampled by the training examples.