booktitle = "Sixth World Congress on Nature and Biologically
Inspired Computing (NaBIC 2014)",
title = "Hybridizing evolutionary algorithms for creating
classifier ensembles",
year = "2014",
month = jul,
pages = "84--90",
abstract = "Genetic programming (GP) has been applied to solve
data classification problems numerous times in previous
studies and the findings in the literature confirm that
GP is able to perform well. In more recent studies,
researchers have shown that using a team of classifiers
can outperform a single classifier. These teams are
referred to as ensembles. Previously, several different
attempts at creating ensembles have been investigated;
some more complex than others. In this study, four
approaches have been proposed, in which the ensemble
methods hybridise a genetic algorithm with a GP
algorithm in different ways. The first three approaches
made use of a generational GP model, while the fourth
used a steady state GP model. The four approaches were
tested on eight public data sets and the findings
confirm that the proposed ensembles outperform the
standard GP method, and additionally outperform other
GP methods found in literature.",