Student's t Distribution based Estimation of Distribution Algorithms for Derivative-free Global Optimization

12 Aug 2016 Bin Liu Shi Cheng Yuhui Shi

In this paper, we are concerned with a branch of evolutionary algorithms termed estimation of distribution (EDA), which has been successfully used to tackle derivative-free global optimization problems. For existent EDA algorithms, it is a common practice to use a Gaussian distribution or a mixture of Gaussian components to represent the statistical property of available promising solutions found so far... (read more)

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