A review on Estimation of Distribution Algorithms in Permutation-based Combinatorial Optimization Problems
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Date
2011Author
Irurozki, Ekhine
Mendiburu Alberro, Alexander
Lozano Alonso, José Antonio
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Estimation of Distribution Algorithms (EDAs) are a set of algorithms
that belong to the field of Evolutionary Computation. Characterized by the use of
probabilistic models to represent the solutions and the dependencies between the
variables of the problem, these algorithms have been applied to a wide set of academic
and real-world optimization problems, achieving competitive results in most
scenarios. Nevertheless, there are some optimization problems, whose solutions can
be naturally represented as permutations, for which EDAs have not been extensively
developed. Although some work has been carried out in this direction, most
of the approaches are adaptations of EDAs designed for problems based on integer
or real domains, and only a few algorithms have been specifically designed to
deal with permutation-based problems. In order to set the basis for a development
of EDAs in permutation-based problems similar to that which occurred in other
optimization fields (integer and real-value problems), in this paper we carry out a
thorough review of state-of-the-art EDAs applied to permutation-based problems.
Furthermore, we provide some ideas on probabilistic modeling over permutation
spaces that could inspire the researchers of EDAs to design new approaches for
these kinds of problems.