Evaluating Methods for Constant Optimization of Symbolic Regression Benchmark Problems

V. V. D. Melo, Benjamin Fowler, W. Banzhaf
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引用次数: 10

Abstract

Constant optimization in symbolic regression is an important task addressed by several researchers. It has been demonstrated that continuous optimization techniques are adequate to find good values for the constants by minimizing the prediction error. In this paper, we evaluate several continuous optimization methods that can be used to perform constant optimization in symbolic regression. We have selected 14 well-known benchmark problems and tested the performance of diverse optimization methods in finding the expected constant values, assuming that the correct formula has been found. The results show that Levenberg-Marquardt presented the highest success rate among the evaluated methods, followed by Powell's and Nelder-Mead's Simplex. However, two benchmark problems were not solved, and for two other problems the Levenberg-Marquardt was largely outperformed by Nelder-Mead Simplex in terms of success rate. We conclude that even though a symbolic regression technique may find the correct formula, constant optimization may fail, thus, this may also happen during the search for a formula and may guide the method towards the wrong solution. Also, the efficiency of LM in finding high-quality solutions by using only a few function evaluations could serve as inspiration for the development of better symbolic regression methods.
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符号回归基准问题的恒优化评价方法
符号回归中的恒优化问题一直是许多研究者关注的重要问题。已经证明,连续优化技术足以通过最小化预测误差来找到合适的常数值。在本文中,我们评估了几种连续优化方法,这些方法可以用来在符号回归中进行常数优化。我们选取了14个知名的基准问题,在假设找到了正确的公式的情况下,测试了不同优化方法在寻找期望常数值方面的性能。结果表明,Levenberg-Marquardt法的成功率最高,其次是Powell法和Nelder-Mead法。然而,有两个基准问题没有得到解决,而对于另外两个问题,Levenberg-Marquardt算法的成功率在很大程度上要优于Nelder-Mead单纯形算法。我们的结论是,即使符号回归技术可能找到正确的公式,持续优化也可能失败,因此,这也可能发生在寻找公式的过程中,并可能引导方法走向错误的解决方案。此外,LM在仅使用几个函数求值就能找到高质量解的效率可以为开发更好的符号回归方法提供灵感。
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