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Toward Understanding EDAs Based on Bayesian Networks Through a Quantitative Analysis

机译:基于贝叶斯网络的EDA定量分析

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摘要

The successful application of estimation of distribution algorithms (EDAs) to solve different kinds of problems has reinforced their candidature as promising black-box optimization tools. However, their internal behavior is still not completely understood and therefore it is necessary to work in this direction in order to advance their development. This paper presents a methodology of analysis which provides new information about the behavior of EDAs by quantitatively analyzing the probabilistic models learned during the search. We particularly focus on calculating the probabilities of the optimal solutions, the most probable solution given by the model and the best individual of the population at each step of the algorithm. We carry out the analysis by optimizing functions of different nature such as Trap5, two variants of Ising spin glass and Max-SAT. By using different structures in the probabilistic models, we also analyze the impact of the structural model accuracy in the quantitative behavior of EDAs. In addition, the objective function values of our analyzed key solutions are contrasted with their probability values in order to study the connection between function and probabilistic models. The results not only show information about the internal behavior of EDAs, but also about the quality of the optimization process and setup of the parameters, the relationship between the probabilistic model and the fitness function, and even about the problem itself. Furthermore, the results allow us to discover common patterns of behavior in EDAs and propose new ideas in the development of this type of algorithms.
机译:估计分布算法(EDA)的成功应用解决了各种问题,从而增强了它们作为有前途的黑盒优化工具的资格。但是,它们的内部行为仍未完全了解,因此有必要朝这个方向努力以促进其发展。本文提出了一种分析方法,该方法可通过对搜索过程中学习到的概率模型进行定量分析,从而提供有关EDA行为的新信息。我们特别关注于在算法的每个步骤中计算最佳解的概率,模型给出的最可能解以及总体的最佳个体。我们通过优化不同性质的功能(例如Trap5,Ising自旋玻璃和Max-SAT的两个变体)来进行分析。通过在概率模型中使用不同的结构,我们还分析了结构模型准确性对EDA定量行为的影响。此外,我们分析的关键解决方案的目标函数值与其概率值进行了对比,以研究函数与概率模型之间的联系。结果不仅显示有关EDA内部行为的信息,而且还涉及优化过程的质量和参数设置,概率模型与适应度函数之间的关系,甚至问题本身。此外,结果使我们能够发现EDA中常见的行为模式,并在开发此类算法时提出新的思路。

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