序贯符号回归遗传规划

Luiz Otavio Vilas Boas Oliveira, F. E. B. Otero, L. F. Miranda, G. Pappa
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引用次数: 3

摘要

顺序符号回归(SSR)是一种技术,它在当前解决方案的误差上递归地诱导函数,将它们连接起来,试图减少结果模型的误差。作为概念证明,该方法先前在一维问题中进行了评估,并与正则遗传规划(GP)和几何语义遗传规划(GSGP)进行了比较。在本文中,我们重新审视SSR,探索在高维、更大和更异构的数据集中的方法行为。我们讨论了将该方法应用于更复杂的问题所产生的困难,例如,过拟合,以及克服这些问题的建议。将SSR与GP和GSGP进行了实验分析,结果表明,在相同的性能下,SSR解比GSGP生成的解更小,比规范GP生成的解更准确。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Revisiting the Sequential Symbolic Regression Genetic Programming
Sequential Symbolic Regression (SSR) is a technique that recursively induces functions over the error of the current solution, concatenating them in an attempt to reduce the error of the resulting model. As proof of concept, the method was previously evaluated in one-dimensional problems and compared with canonical Genetic Programming (GP) and Geometric Semantic Genetic Programming (GSGP). In this paper we revisit SSR exploring the method behaviour in higher dimensional, larger and more heterogeneous datasets. We discuss the difficulties arising from the application of the method to more complex problems, e.g., overfitting, along with suggestions to overcome them. An experimental analysis was conducted comparing SSR to GP and GSGP, showing SSR solutions are smaller than those generated by the GSGP with similar performance and more accurate than those generated by the canonical GP.
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