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Hybrid Methods

Kurt Marti
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Kurt Marti: University of Bundeswehr Munich

Chapter Chapter 17 in Optimization Under Stochastic Uncertainty, 2020, pp 327-337 from Springer

Abstract: Abstract Depending on the type of the random search method, it may happen that the procedure finds rather fast a local extremum x l o c ∗ $$x_{loc}^{\ast }$$ of the objective function f under consideration, but get then stuck in this point. On the other hand, there are procedures having features to omit this behavior. For example, a special property of simulated annealing methods is that also non-improving steps are possible with decreasing probability (cooling). Thus, steps out of the neighborhood of a local extremum are possible with a certain probability.

Date: 2020
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DOI: 10.1007/978-3-030-55662-4_17

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