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引用次数: 1

摘要

直接从实验数据中学习符号表达式是人工智能驱动的科学发现的重要一步。然而,最先进的方法仅限于学习简单的表达式。涉及许多自变量的回归表达式仍然遥不可及。受科学中广泛使用的控制变量实验的启发,我们提出了控制变量遗传规划(CVGP)用于多自变量的符号回归。CVGP通过定制的实验设计加速符号表达式的发现,而不是从先验收集的固定数据集中学习。CVGP首先使用遗传编程拟合涉及一小组自变量的简单表达式,在控制实验中,其他变量被保持为常量。然后,它通过添加新的自变量来扩展前几代学习的表达式,使用允许这些变量变化的新控制变量实验。从理论上讲,我们证明了CVGP作为一种增量构建方法,在学习一类表达式时可以在搜索空间中产生指数减少。在实验中,CVGP在学习涉及多个自变量的符号表达式方面优于几个基线。
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Symbolic Regression via Control Variable Genetic Programming
Learning symbolic expressions directly from experiment data is a vital step in AI-driven scientific discovery. Nevertheless, state-of-the-art approaches are limited to learning simple expressions. Regressing expressions involving many independent variables still remain out of reach. Motivated by the control variable experiments widely utilized in science, we propose Control Variable Genetic Programming (CVGP) for symbolic regression over many independent variables. CVGP expedites symbolic expression discovery via customized experiment design, rather than learning from a fixed dataset collected a priori. CVGP starts by fitting simple expressions involving a small set of independent variables using genetic programming, under controlled experiments where other variables are held as constants. It then extends expressions learned in previous generations by adding new independent variables, using new control variable experiments in which these variables are allowed to vary. Theoretically, we show CVGP as an incremental building approach can yield an exponential reduction in the search space when learning a class of expressions. Experimentally, CVGP outperforms several baselines in learning symbolic expressions involving multiple independent variables.
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