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Initial approaches to the application of islands-based parallel EDAs in continuous domains

机译:在连续域中应用基于岛的并行EDA的初始方法

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Evolutionary algorithms in general and estimation of distribution algorithms in particular have been widely applied to solve combinatorial optimization problems, that is, problems in which the variables involved are discrete. However, there are also modifications or extension of these algorithms to deal with numerical optimization problems, i.e., continuous variables. In this paper we focus on dealing with numerical optimization problems by using island-based estimation of distribution algorithms. As far as we know, this is the first time parallel EDAs are used in continuous domains. Our proposal includes the use of two different topologies (ring and star) and two different types of information sharing between islands: individuals and models. In the case of model migration we specify the way in which models are combined and also study whether it is better to use or not adaptive combination. The proposed algorithms are tested over sixteen problem instances, and from the analysis of the results we can conclude that model migration using adaptive combination is, in general, the outstanding approach.
机译:通常,进化算法尤其是分布算法的估计已被广泛地应用于解决组合优化问题,即涉及的变量是离散的问题。但是,这些算法也有修改或扩展以处理数值优化问题,即连续变量。在本文中,我们专注于通过使用基于岛的分布估计算法来处理数值优化问题。据我们所知,这是在连续域中首次使用并行EDA。我们的建议包括使用两种不同的拓扑(环形和星形)以及在岛屿之间共享两种不同类型的信息:个人和模型。在模型迁移的情况下,我们指定模型的组合方式,并研究是否使用自适应组合更好。所提出的算法在16个问题实例上进行了测试,通过对结果的分析,我们可以得出结论,使用自适应组合的模型迁移通常是出色的方法。

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