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Genetic algorithms today constitute a family of e?ective global
optimization methods used to solve di?cult real-life problems which
arise in science and technology. Despite their computational
complexity, they have the ability to explore huge data sets and
allow us to study exceptionally problematic cases in which the
objective functions are irregular and multimodal, and where
information about the extrema location is unobtainable in other
ways.
Theybelongtotheclassofiterativestochasticoptimizationstrategiesthat,
during each step, produce and evaluate the set of admissible points
from the search domain, called the random sample or population. As
opposed to the Monte Carlo strategies, in which the population is
sampled according to the uniform probability distribution over the
search domain, genetic algorithms modify the probability
distribution at each step. Mechanisms which adopt sampling
probability distribution are transposed from biology. They are
based mainly on genetic code mutation and crossover, as well as on
selection among living individuals. Such mechanisms have been
testedbysolvingmultimodalproblemsinnature,whichiscon?rmedinpart-
ular by the many species of animals and plants that are well ?tted
to di?erent ecological niches. They direct the search process,
making it more e?ective than a completely random one (search with a
uniform sampling distribution).
Moreover,well-tunedgenetic-basedoperationsdonotdecreasetheexploration
ability of the whole admissible set, which is vital in the global
optimization process. The features described above allow us to
regard genetic algorithms as a new class of arti?cial intelligence
methods which introduce heuristics, well tested in other ?elds, to
the classical scheme of stochastic global search.
Genetic algorithms today constitute a family of e?ective global
optimization methods used to solve di?cult real-life problems which
arise in science and technology. Despite their computational
complexity, they have the ability to explore huge data sets and
allow us to study exceptionally problematic cases in which the
objective functions are irregular and multimodal, and where
information about the extrema location is unobtainable in other
ways.
Theybelongtotheclassofiterativestochasticoptimizationstrategiesthat,
during each step, produce and evaluate the set of admissible points
from the search domain, called the random sample or population. As
opposed to the Monte Carlo strategies, in which the population is
sampled according to the uniform probability distribution over the
search domain, genetic algorithms modify the probability
distribution at each step. Mechanisms which adopt sampling
probability distribution are transposed from biology. They are
based mainly on genetic code mutation and crossover, as well as on
selection among living individuals. Such mechanisms have been
testedbysolvingmultimodalproblemsinnature, whichiscon?rmedinpart-
ular by the many species of animals and plants that are well ?tted
to di?erent ecological niches. They direct the search process,
making it more e?ective than a completely random one (search with a
uniform sampling distribution). Moreover,
well-tunedgenetic-basedoperationsdonotdecreasetheexploration
ability of the whole admissible set, which is vital in the global
optimization process. The features described above allow us to
regard genetic algorithms as a new class of arti?cial intelligence
methods which introduce heuristics, well tested in other ?elds, to
the classical scheme of stochastic global searc
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