operations in the natural world do not destroy BBs,
but instead conserve them wholly; it is the material
between the BBs that undergoes crossover
exchanges and point mutations. It is well-known that
the destruction of already-discovered BBs by
crossover operators is one of the major problems
with standard GA (originally shown through
experiments with RR functions). Because of this, the
ability of homology-based mechanisms (e.g. sex-
based polymerase chain reaction) to conserve
already located BBs is of tremendous interest to us.
The longer-term goals of our project are to
develop the retroGA approaches such that we can
more clearly gauge their utility to computer science
in general, as well as in such practical applications
as in vitro molecular evolution and biomolecular
computation. In recent decades, computational GA
has become an effective mathematical instrument for
modelling and analyzing the processes and
mechanisms of biological evolution. As retroGA is
for the most part domain-independent, it can readily
be applied to all forms of EC, for example greatly
assisting in solving problems on the selection of
macromolecules with properties that do not exist in
the natural world.
ACKNOWLEDGEMENTS
This work was supported by Joint NSF/NIGMS
BioMath Program, 1-R01-GM072022 and the
National Institutes of Health, 2R56GM072022-06.
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