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Scaling Up Evolutionary Programming Algorithms

机译:扩大进化规划算法

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Most analytical and experimental results on evolutionary programming (EP) are obtained using low-dimensional problems, e.g., smaller than 50. It is unclear, however, whether the empirical results obtained from the low-dimensional problems still hold for high-dimensional cases. This paper investigates the behaviour of four different EP algorithms for large-scale problems, i.e., problems whose dimension ranges from 100 to 300. The four are classical EP (CEP) [1, 2], fast EP (FEP) [3], improved FEP (IFEP) [4] and a mixed EP (MEP) proposed in this paper. It is discovered that neither CEP nor FEP performs satisfactorily for the large-scale problems investigated here. However, IFEP and MEP are able to perform consistently well for both unimodal and multimodal functions with various dimensionalities. In addition, the time used by IFEP and MEP to find a near optimal solution appears to grow only polynomially (second-order polynomial) as the dimensionality of the problems studied increases.
机译:关于进化规划(EP)的大多数分析和实验结果都是使用低维问题获得的,例如小于50。但是,从低维问题获得的经验结果是否仍适用于高维情况尚不清楚。本文研究了针对大规模问题(即维数范围从100到300的问题)的四种不同EP算法的行为。这四种算法是经典EP(CEP)[1、2],快速EP(FEP)[3],改进的FEP(IFEP)[4]和本文提出的混合EP(MEP)。结果发现,对于这里研究的大规模问题,CEP和FEP均不能令人满意地执行。但是,IFEP和MEP对于具有各种维度的单峰函数和多峰函数都能始终如一地表现良好。此外,随着所研究问题的维数增加,IFEP和MEP用于寻找近似最优解的时间似乎只会增长多项式(二阶多项式)。

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