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首页> 外文期刊>Soft computing: A fusion of foundations, methodologies and applications >Power-law fitness scaling on multi-objective evolutionary algorithms: interpretations of experimental results
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Power-law fitness scaling on multi-objective evolutionary algorithms: interpretations of experimental results

机译:多目标进化算法的权力法健身缩放:实验结果解释

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The effect of power-law fitness scaling method on the convergence and distribution of MOEAs is investigated in a systematic fashion. The proposed method is named as gamma (gamma) correction-based fitness scaling (GCFS). What scaling does is that the selection pressure of a population can be efficiently regulated. Hence, fit and unfit individuals may be separated well in fitness-wise before going to the selection mechanism. It is then applied to Strength Pareto Evolutionary Algorithm 2 (SPEA2) and Domination Power of an individual Genetic Algorithm (DOPGA). Firstly, the effectiveness of GCFS is tested by 11 static gamma values (including 0.5, 1, 2, ..., 9, 10) on nine well-known benchmarks. Simulated study safely states that SPEA2 and DOPGA may perform generally better with the square (gamma = 2) and the cubic (gamma = 3) of original fitness value, respectively. Secondly, an adaptive version of GCFS is proposed based on statistical merits (standard deviation and mean of fitness values) and implemented to the selected MOEAs. Generally speaking, fitness scaling significantly improves the convergence properties of MOEAs without extra computational burdens. It is observed that the convergence ability of existing MOEAs with fitness scaling (static or adaptive) can be improved. Simulated results also show that GCFS is only effective when fitness proportional selection methods (such as stochastic universal sampling-SUS) are used. GCFS is not effective when tournament selection is used.
机译:幂律健身缩放方法对系统时尚研究了MoeAS的收敛性和分布的影响。所提出的方法被命名为基于伽马(GAMMA)校正的健身缩放(GCF)。什么缩放的表明是可以有效地调节人口的选择压力。因此,在进入选择机制之前,适合和不适合的个体可以在健身方面分开。然后应用于强度帕累托进化算法2(SPEA2)和单独遗传算法(DOPGA)的统治力。首先,在九个众所周知的基准测试中,GCFS的有效性由11个静态伽马值(包括0.5,1,2,...,10)测试。模拟研究安全地指出,SPEA2和DOPGA可以分别使用正方形(γ= 2)和原始健康价值的立方(Gamma = 3)更好地表现。其次,基于统计优点(标准偏差和适应值的平均值)提出了GCF的自适应版本,并将其实施到所选的MOEAS。一般来说,健身缩放显着提高了Moeas的收敛性,而无需额外的计算负担。观察到,可以提高现有MOEAS的收敛能力(静态或自适应)。模拟结果还表明,当使用适用性比例选择方法(例如随机通用采样-SUS)时,GCF仅有效。使用锦标赛选择时,GCF无效。

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