使用基于平均适应度的选择来对抗维度的诅咒

Stephen Y. Chen, Antonio Bolufé-Röhler, James Montgomery, Wenxuan Zhang, T. Hendtlass
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引用次数: 2

摘要

众所周知,随着维数的增加,数值优化的元启发式算法的性能往往会下降。这些效果通常被称为“维度的诅咒”。随着维度的增加,搜索空间的一个明显变化是它们的体积呈指数增长,这导致了大量关于改进探索的研究。最近的一项研究发现,吸引盆地的形状也会随着维度的增加而急剧变化,这导致了基于选择的方法来对抗维度诅咒。引入基于平均适应度的选择是为了减少基于适应度的选择带来的选择误差。实验结果表明,随着维数的增加,基于平均适应度的选择错误率的增长速度要慢得多。
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Using Average-Fitness Based Selection to Combat the Curse of Dimensionality
It is well known that metaheuristics for numerical optimization tend to decrease in performance as dimensionality increases. These effects are commonly referred to as “The Curse of Dimensionality”. An obvious change to search spaces with increasing dimensionality is that their volume grows exponentially, and this has led to large amounts of research on improved exploration. A recent insight is that the shape of attraction basins can also change drastically with increasing dimensionality, and this has led to selection-based approaches to combat the Curse of Dimensionality. Average-Fitness Based Selection is introduced as a means to reduce the selection errors caused by Fitness-Based Selection. Experimental results show that the rate of selection errors grows much more slowly for Average-Fitness Based Selection with Increasing dimensionality.
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