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A building block conservation and extension mechanism for improved performance in Polynomial Symbolic Regression tree-based Genetic Programming

机译:一种基于多项式象征性回归遗传编程的提高性能的构建块保护和扩展机制

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Polynomial Symbolic Regression tree-based Genetic Programming faces considerable obstacles towards the discovery of a global optimum solution; three of these being bloat, premature convergence and a compromised ability to retain building block information. We present a building block conservation and extension strategy that targets these specific obstacles. Experiments conducted demonstrate a superior performance of our strategy relative to the canonical GP. Further our strategy achieves a competitive reduction in bloat.
机译:基于多项式符号回归树的遗传编程面向发现全球最佳解决方案的相当大的障碍;其中三个是膨胀,过早的融合和损害的保留构建块信息的能力。我们提出了一个构建块保护和延伸策略,以实现这些特定障碍。进行的实验表明我们对规范GP的策略的优越性。此外,我们的战略达到了膨胀的竞争减少。

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