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Application of Symbolic Regression on Blast Furnace and Temper Mill Datasets

机译:符号回归在高炉和调质厂数据集上的应用

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This work concentrates on three different modifications of a genetic programming system for symbolic regression analysis. The coefficient of correlation R2 is used as fitness function instead of the mean squared error and offspring selection is used to ensure a steady improvement of the achieved solutions. Additionally, as the fitness evaluation consumes most of the execution time, the generated solutions are only evaluated on parts of the training data to speed up the whole algorithm. These three algorithmic adaptations are incorporated in the symbolic regression algorithm and their impact is tested on two real world datasets describing a blast furnace and a temper mill process. The effect on the achieved solution quality as well as on the produced models are compared to results generated by a symbolic regression algorithm without the mentioned modifications and the benefits are highlighted.
机译:这项工作集中于对基因编程系统进行符号回归分析的三种不同修改。相关系数R2用作适应度函数,而不是均方误差,后代选择用于确保所获得解决方案的稳定改进。另外,由于适应性评估会消耗大部分执行时间,因此仅对部分训练数据进行评估才能生成生成的解,从而加快了整个算法的速度。将这三种算法改编纳入符号回归算法中,并在描述高炉和回火炉过程的两个真实世界数据集上测试了它们的影响。将对获得的解决方案质量以及生成的模型的影响与通过符号回归算法生成的结果进行比较,而无需进行提及的修改,并突出显示了其好处。

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