Publication Date:
2006
abstract:
A new connectionist model, called Switching Neural Network
(SNN), for the solution of classification problems is presented. SNN in-
cludes a first layer containing a particular kind of A/D converters, called
latticizers, that suitably transform input vectors into binary strings.
Then, the subsequent two layers of an SNN realize a positive Boolean
function that solve in a lattice domain the original classi¯cation problem.
Every function realized by an SNN can be written in terms of intelligi-
ble rules. Training can be performed by adopting a proper method for
positive Boolean function reconstruction, called Shadow Clustering (SC).
Simulation results obtained on the StatLog benchmark show the good
quality of the SNNs trained with SC.
Iris type:
01.01 Articolo in rivista
List of contributors: