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Soft target and functional complexity reduction: A hybrid regularization method for genetic programming

机译:软目标和功能复杂性减少:遗传编程的混合正则化方法

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Regularization is frequently used in supervised machine learning to prevent models from overfitting. This paper tackles the problem of regularization in genetic programming. We apply, for the first time, soft target regularization, a method recently defined for artificial neural networks, to genetic programming. Also, we introduce a novel measure of functional complexity of the genetic programming individuals, aimed at quantifying their degree of curvature. We experimentally demonstrate that both the use of soft target regularization, and the minimization of the complexity during learning, are often able to reduce overfitting, but they are never able to eliminate it. On the other hand, we demonstrate that the integration of these two strategies into a novel hybrid genetic programming system can completely eliminate overfitting, for all the studied test cases. Last but not least, consistently with what found in the literature, we offer experimental evidence of the fact that the size of the genetic programming models has no correlation with their generalization ability.
机译:正规化经常用于监督机器学习,以防止模型过度装备。本文解决了遗传编程中正规化问题。我们申请了第一次软目标正则化,该方法最近为人工神经网络定义为遗传编程。此外,我们介绍了遗传编程个体的功能复杂性的新措施,旨在量化其曲率程度。我们通过实验表明,使用软目标正则化以及学习期间的复杂性最小化的使用往往能够减少过度装备,但它们永远无法消除它。另一方面,我们证明,这两种策略的整合到新型混合遗传编程系统中可以完全消除所有研究的测试用例的过度拟合。最后但并非最不重要的是,与文献中的发现一致,我们提供了实验证据,即遗传编程模型的规模与其泛化能力没有相关性。

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