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An analysis of exchanging fitness cases with population size in symbolic regression genetic programming with respect to the computational model

机译:计算模型在符号回归遗传规划中以人口规模交换健身案例的分析

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Symbolic regression using genetic programming is an ideal algorithm for automatically determining an otherwise unknown functional relationship between a set of inputs and outputs. More complex problems in this area typically require a larger amount of training epochs to exemplify the relationship. Previous work has shown that using a strategy of trading off higher population sizes with lower data sample sizes in the early generations yields better results. In this paper we take a closer look at this tradeoff policy and how it applies to the computation model, as well as examine some of the parameter settings.
机译:使用遗传编程的符号回归是一种理想的算法,用于自动确定一组输入和输出之间的未知函数关系。在该领域中,更复杂的问题通常需要大量的训练时期来举例说明这种关系。先前的工作表明,在早期使用权衡较高人口数量和较低数据样本数量的策略可获得更好的结果。在本文中,我们将仔细研究此折衷策略及其在计算模型中的应用方式,并研究一些参数设置。

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