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Quantum-Inspired Multi-gene Linear Genetic Programming Model for Regression Problems

机译:Quantum-Inspired多基因线性遗传编程模型进行回归问题

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We propose the Quantum-Inspired Multi-Gene Lin-ear Genetic Programming (QIMuLGP), which is a generalization of Quantum-Inspired Linear Genetic Programming (QILGP) model for symbolic regression. QIMuLGP allows us to explore a different genotypic representation (i.e. linear), and to use more than one genotype per individual, combining their outputs using least squares method (multi-gene approach). We used 11 benchmark problems to experimentally compare QIMuLGP with: canonical tree Genetic Programming, Multi-Gene tree-based GP (MGGP), and QILGP. QIMuLGP obtained better results than QILGP in almost all experiments performed. When compared to MGGP, QIMuLGP achieved equivalent errors for some experiments with its runtime always shorter (up to 20 times and 8 times on average), which is an important advantage in high dimensional-scalable problems.
机译:我们提出了量子启发的多基因林耳遗传编程(QIMULGP),其是符号回归量的量子启发线性遗传编程(Qilgp)模型的概括。 QiMulgp允许我们探讨不同的基因型表示(即线性),并使用每个单独的多种基因型,使用最小二乘法(多基因方法)组合它们的输出。我们使用11个基准问题来通过:Canonical Tree Genetic编程,基于多基因树的GP(MGGP)和QilGP的QiMulgp,以及基于QiMulgp的基准问题。在几乎所有实验中,QiMulgp在几乎所有实验中获得的结果比Qilgp更好。与MGGP相比,QIMULGP在其运行时始终更短(平均最长20次和8次)实现了等效误差,这是高维度可扩展问题的一个重要优势。

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