Abstract: This paper presents a comparison of four representative discretization methods from different classes
to be used with so called PGN-classifier which deals with categorical data. We examine which of them supplies
more convenient discretization for PGN Classification Method. The experiments are provided on the base of UCI
repository data sets. The comparison tests were provided using an experimental classification machine learning
system "PaGaNe", which realizes Pyramidal Growing Network (PGN) Classification Algorithm. It is found that in
general, PGN-classifier trained on data preprocessed by Chi-merge achieve lower classification error than those
trained on data preprocessed by the other discretization methods. The comparison of PGN-classifier, trained with
Chi-merge-discretizator with other classifiers (realized in WEKA system) shows good results in favor of PGNclassifier.
Keywords: Data Mining, Machine Learning, Discretization, Data Analysis, Pyramidal Growing Networks
Link:
COMPARISON OF DISCRETIZATION METHODS FOR PREPROCESSING DATA
FOR PYRAMIDAL GROWING NETWORK CLASSIFICATION METHOD
Ilia Mitov, Krassimira Ivanova, Krassimir Markov,
Vitalii Velychko, Peter Stanchev, Koen Vanhoof
http://www.foibg.com/ibs_isc/ibs-14/ibs-14-p04.pdf