Аннотация
Gene Expression Programming (GEP) is a powerful
evolutionary method derived from Genetic Programming
(GP) for model learning and knowledge discovery.
However, when dealing with complex problems, its
genotype under Karva notation does not allow
hierarchical composition of the solution, which impairs
the efficiency of the algorithm. We propose a new
representation scheme based on prefix notation that
overcomes the original GEP's drawbacks. The resulted
algorithm is called Prefix GEP (P-GEP). The major
advantages with P-GEP include the natural hierarchy in
forming the solutions and more protective genetic
operations for substructure components. An artificial
symbolic regression problem and a set of benchmark
classification problems from UCI machine learning
repository have been tested to demonstrate the
applicability of P-GEP. The results show that P-GEP
follows a faster fitness convergence curve and the
rules generated from P-GEP consistently achieve better
average classification accuracy compared with GEP
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