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Metamodel Assisted Mixed-Integer Evolution Strategies Based on Kendall Rank Correlation Coefficient

机译:Metomodel辅助基于Kendall等级相关系数的混合整数演进策略

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Although mixed-integer evolution strategies (MIES) have been successfully applied to optimization of mixed-integer problems, they may encounter challenges when fitness evaluations are time consuming. In this paper, we propose to use a radial-basis-function network (RBFN) trained based on the rank correlation coefficient distance metric to assist MIES. For the distance metric of the RBFN, we modified a heterogeneous metric (HEOM) by multiplying the weight for each dimension. Whilst the standard RBFN aims to approximate the fitness accurately, the proposed RBFN tries to rank the individuals (according to their fitness) correctly. Kendall rank correlation Coefficient (RCC) is adopted to measure the degree of rank correlation between the fitness and each variable. The higher the rank similarity with fitness, the greater the weight one variable will be given. Experimental results show the efficacy of the MIES assisted by the RBFN trained by maximizing the RCC performs.
机译:虽然混合整数演进策略(MIES)已成功应用于优化混合整数问题,但当健身评估是耗时时,它们可能会遇到挑战。在本文中,我们建议使用基于等级相关系数距离度量训练的径向基函数网络(RBFN)来辅助MIES。对于RBFN的距离度量,我们通过乘以每个维度的重量来修改异构度量(鞋面)。虽然标准的RBFN旨在准确地近似健身,所以提出的RBFN试图将个体(根据其健身)进行排名。采用KENDALL等级相关系数(RCC)测量健身和每个变量之间的等级相关程度。等级相似度与适应度越高,将给出一个变量的重量越大。实验结果表明,通过最大化RCC执行的RBFN辅助的MIES辅助的功效。

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