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Multivariate Cauchy EDA Optimisation

机译:多元柯西EDA优化

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摘要

We consider Black-Box continuous optimization by Estimation of Distribution Algorithms (EDA). In continuous EDA, the multivariate Gaussian distribution is widely used as a search operator, and it has the well-known advantage of modelling the correlation structure of the search variables, which univa-riate EDA lacks. However, the Gaussian distribution as a search operator is prone to premature convergence when the population is far from the optimum. Recent work suggests that replacing the univariate Gaussian with a univariate Cauchy distribution in EDA holds promise in alleviating this problem because it is able to make larger jumps in the search space due to the Cauchy distribution's heavy tails. In this paper, we propose the use of a multivariate Cauchy distribution to blend together the advantages of multivariate modelling with the ability of escaping early convergence to efficiently explore the search space. Experiments on 16 benchmark functions demonstrate the superiority of multivariate Cauchy EDA against univariate Cauchy EDA, and its advantages against multivariate Gaussian EDA when the population lies far from the optimum.
机译:我们考虑通过分布算法估计(EDA)进行黑匣子连续优化。在连续EDA中,多元高斯分布被广泛用作搜索算子,它具有对搜索变量的相关结构进行建模的众所周知的优势,而EDA则缺乏这种结构。但是,当总体远非最优时,作为搜索算子的高斯分布易于过早收敛。最近的工作表明,在EDA中用单变量柯西分布替换单变量高斯具有解决此问题的希望,因为由于柯西分布的尾巴很重,它可以在搜索空间中进行较大的跳跃。在本文中,我们建议使用多元Cauchy分布将多元建模的优势与逃避早期收敛的能力融合在一起,从而有效地探索搜索空间。在16个基准函数上进行的实验表明,当种群远离最佳时,多元Cauchy EDA优于单变量Cauchy EDA,以及针对多元高斯EDA的优势。

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