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Scaled Symbolic Regression

机译:比例符号回归

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摘要

Performing a linear regression on the outputs of arbitrary symbolic expressions has empirically been found to provide great benefits. Here some basic theoretical results of linear regression are reviewed on their applicability for use in symbolic regression. It will be proven that the use of a scaled error measure, in which the error is calculated after scaling, is expected to perform better than its unsealed counterpart on all possible symbolic regression problems. As the method (ⅰ) does not introduce additional parameters to a symbolic regression run, (ⅱ) is guaranteed to improve results on most symbolic regression problems (and is not worse on any other problem), and (ⅲ) has a well-defined upper bound on the error, scaled squared error is an ideal candidate to become the standard error measure for practical applications of symbolic regression.
机译:从经验上发现,对任意符号表达式的输出执行线性回归可以带来很大的好处。此处对线性回归的一些基本理论结果进行了综述,以说明它们在符号回归中的适用性。可以证明,在所有可能的符号回归问题上,使用缩放误差度量(在缩放后计算误差)预期比未密封的度量更好。由于方法(ⅰ)不会在符号回归运算中引入其他参数,因此(ⅱ)可以保证改善大多数符号回归问题的结果(并且在其他任何问题上也不会更糟),并且(ⅲ)具有明确的定义在误差的上限上,比例平方误差是成为符号回归的实际应用的标准误差度量的理想选择。

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