Abstract
There have been many applications of artificial
intelligence data mining recently. One of its many
benefits includes the ability to cluster or generate
patterns from large amount of data when conventional
statistical methods are proven ineffective. One such
techniques in data mining is inductive learning. There
have been applications of evolutionary computation in
inductive learning where genetic algorithms have been
employed in chromosomes representation. This paper
describes an attempt to use genetic programming in
inductive learning. A program known as Genetic
Programming for Inductive Learning (GPIL) is described.
It uses genetic programming and rectifies the short
comings of chromosomes representation in genetic
algorithms. The program has been tested on a benchmark
data set. It achieved better performance with higher
accuracy than previous works on the same data set. The
paper also discusses relevant aspects in using genetic
programming in inductive learning and suggests
directions for future work.
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