AI-Feynman: Symbolic regression algorithm
Abstract
AI-Feynman fits analytical expressions to data sets via symbolic regression, mapping the target variable to different features supplied in the data array. Using a neural network with constraints in the number of parameters utilized, the code provides the ability to obtain analytical expressions for normalized features that are used to predict a Pareto-optimal target. AI-Feynman is robust in handling noisy data, recursively generating multidimensional symbolic expressions that match data from an unknown functions.
- Publication:
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Astrophysics Source Code Library
- Pub Date:
- October 2023
- Bibcode:
- 2023ascl.soft10011U
- Keywords:
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- Software