Multiview Symbolic Regression

被引:0
|
作者
Russeil, Etienne [1 ]
de Franca, Fabricio Olivetti [2 ]
Malanchev, Konstantin [3 ]
Burlacu, Bogdan [4 ]
Ishida, Emille E. O. [1 ]
Leroux, Marion [5 ]
Michelin, Clement [5 ]
Moinard, Guillaume [6 ]
Gangler, Emmanuel [1 ]
机构
[1] Univ Clermont Auvergne, CNRS, IN2P3, LPC, Clermont Ferrand, France
[2] Univ Fed ABC, Ctr Math Comp & Cognit, Santo Andre, SP, Brazil
[3] Carnegie Mellon Univ, Dept Phys, McWilliams Ctr Cosmol & Astrophys, Pittsburgh, PA USA
[4] Univ Appl Sci Upper Austria, Heurist & Evolutionary Algorithms Lab, Hagenberg, Austria
[5] Univ Clermont Auvergne, CNRS, Clermont Auvergne INP, ICCF, Clermont Ferrand, France
[6] Sorbonne Univ, CNRS, LIP6, Paris, France
基金
巴西圣保罗研究基金会;
关键词
genetic programming; symbolic regression; interpretability; BOUGUER-LAMBERT; MODEL;
D O I
10.1145/3638529.3654087
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Symbolic regression (SR) searches for analytical expressions representing the relationship between explanatory and response variables. Current SR methods assume a single dataset extracted from a single experiment. Nevertheless, frequently, the researcher is confronted with multiple sets of results obtained from experiments conducted with different set-ups. Traditional SR methods may fail to find the underlying expression since the parameters of each experiment can be different. In this work we present Multiview Symbolic Regression (MvSR), which takes into account multiple datasets simultaneously, mimicking experimental environments, and outputs a general parametric solution. This approach fits the evaluated expression to each independent dataset and returns a parametric family of functions f (x; theta) simultaneously capable of accurately fitting all datasets. We demonstrate the effectiveness of MvSR using data generated from known expressions, as well as real-world data from astronomy, chemistry and economy, for which an a priori analytical expression is not available. Results show that MvSR obtains the correct expression more frequently and is robust to hyperparameters change. In real-world data, it is able to grasp the group behaviour, recovering known expressions from the literature as well as promising alternatives, thus enabling the use MvSR to a large range of experimental scenarios.
引用
收藏
页码:961 / 970
页数:10
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