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Estimation of distribution algorithm based on multivariate Gaussian copulas

机译:基于多变量高斯共组合的分布算法估计

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Copula is a powerful tool for multivariate probability analysis. Estimation of distribution algorithms are a class of optimization algorithms based on probability distribution model. This paper introduces a new estimation of distribution algorithm with multivariate Gaussian copulas. In the algorithm, Gaussian copula parameters are firstly estimated by estimating Kendall's tau and using the relationship of Kendall's tau and correlation matrix, thus, joint distribution is estimated. Then, the Monte Carte simulation is used to generate new individuals. The relative experimental results show that the new algorithm is effective.
机译:Copula是多元概率分析的强大工具。分布算法的估计是基于概率分布模型的一类优化算法。本文介绍了多变量高斯共用分布算法的新估计。在该算法中,通过估计Kendall的Tau和肯德尔Tau和相关矩阵的关系,首先估计高斯谱图参数,因此估计了联合分布。然后,蒙特卡特仿真用于生成新的个人。相对实验结果表明,新算法是有效的。

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