keywords = "genetic algorithms, genetic programming, Coevolution,
problem decomposition, subset selection, supervised
learning, training efficiency",
abstract = "A bid-based approach for coevolving Genetic
Programming classifiers is presented. The approach
Co-evolves a population of learners that decompose the
instance space by way of their aggregate bidding
behaviour. To reduce computation overhead, a small,
relevant, subset of training exemplars is
(competitively) coevolved alongside the learners. The
approach solves multi-class problems using a single
population and is evaluated on three large datasets. It
is found to be competitive, especially compared to
classifier systems, while significantly reducing the
computation overhead associated with training.",
notes = "GECCO-2007 A joint meeting of the sixteenth
international conference on genetic algorithms
(ICGA-2007) and the twelfth annual genetic programming
conference (GP-2007).