Estimation of distribution algorithm

Estimation of distribution algorithm. For each iteration i, a random draw is performed for a population P in a distribution PDu. The distribution parameters PDe are then estimated using the selected points PS. The illustrated example optimizes a continuous objective function f(X) with a unique optimum O. The sampling (following a normal distribution N) concentrates around the optimum as one goes along unwinding algorithm.

Estimation of distribution algorithms (EDAs), sometimes called probabilistic model-building genetic algorithms (PMBGAs),[1] are stochastic optimization methods that guide the search for the optimum by building and sampling explicit probabilistic models of promising candidate solutions. Optimization is viewed as a series of incremental updates of a probabilistic model, starting with the model encoding an uninformative prior over admissible solutions and ending with the model that generates only the global optima.[2][3][4]

EDAs belong to the class of evolutionary algorithms. The main difference between EDAs and most conventional evolutionary algorithms is that evolutionary algorithms generate new candidate solutions using an implicit distribution defined by one or more variation operators, whereas EDAs use an explicit probability distribution encoded by a Bayesian network, a multivariate normal distribution, or another model class. Similarly as other evolutionary algorithms, EDAs can be used to solve optimization problems defined over a number of representations from vectors to LISP style S expressions, and the quality of candidate solutions is often evaluated using one or more objective functions.

The general procedure of an EDA is outlined in the following:

t := 0
initialize model M(0) to represent uniform distribution over admissible solutions
while (termination criteria not met) do
    P := generate N>0 candidate solutions by sampling M(t)
    F := evaluate all candidate solutions in P
    M(t + 1) := adjust_model(P, F, M(t))
    t := t + 1

Using explicit probabilistic models in optimization allowed EDAs to feasibly solve optimization problems that were notoriously difficult for most conventional evolutionary algorithms and traditional optimization techniques, such as problems with high levels of epistasis[citation needed]. Nonetheless, the advantage of EDAs is also that these algorithms provide an optimization practitioner with a series of probabilistic models that reveal a lot of information about the problem being solved. This information can in turn be used to design problem-specific neighborhood operators for local search, to bias future runs of EDAs on a similar problem, or to create an efficient computational model of the problem.

For example, if the population is represented by bit strings of length 4, the EDA can represent the population of promising solution using a single vector of four probabilities (p1, p2, p3, p4) where each component of p defines the probability of that position being a 1. Using this probability vector it is possible to create an arbitrary number of candidate solutions.

  1. ^ Pelikan, Martin (2005-02-21), "Probabilistic Model-Building Genetic Algorithms", Hierarchical Bayesian Optimization Algorithm, Studies in Fuzziness and Soft Computing, vol. 170, Springer Berlin Heidelberg, pp. 13–30, doi:10.1007/978-3-540-32373-0_2, ISBN 9783540237747
  2. ^ Pedro Larrañaga; Jose A. Lozano (2002). Estimation of Distribution Algorithms a New Tool for Evolutionary Computation. Boston, MA: Springer US. ISBN 978-1-4615-1539-5.
  3. ^ Jose A. Lozano; Larrañaga, P.; Inza, I.; Bengoetxea, E. (2006). Towards a new evolutionary computation advances in the estimation of distribution algorithms. Berlin: Springer. ISBN 978-3-540-32494-2.
  4. ^ Pelikan, Martin; Sastry, Kumara; Cantú-Paz, Erick (2006). Scalable optimization via probabilistic modeling : from algorithms to applications; with 26 tables. Berlin: Springer. ISBN 978-3540349532.

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