abstract = "This manuscript proposes a hyper-heuristic approach
towards mitigating Premature Convergence caused by
objective fitness in Genetic Programming (GP). The
objective fitness function used in standard GP has the
potential to profoundly exacerbate Premature
Convergence in the algorithm. Accordingly several
alternative fitness measures have been proposed in GP
literature. These alternative fitness measures replace
the objective function, with the specific aim of
mitigating this type of Premature Convergence. However
each alternative fitness measure is found to have its
own intrinsic limitations. To this end the proposed
approach automates the selection of distinct fitness
measures during the progression of GP. The power of
this methodology lies in the ability to compensate for
the weaknesses of each fitness measure by automating
the selection of the best alternative fitness measure.
Our hyper-heuristic approach is found to achieve
generality in the alleviation of Premature Convergence
caused by objective fitness. Vitally the approach is
unprecedented and highlights a new paradigm in the
design of GP systems.",
notes = "School of Mathematics, Statistics and Computer
Science, University of KwaZulu-Natal, Pietermaritzburg,
South Africa