A computational framework for physics-informed symbolic regression with straightforward integration of domain knowledge
Created by W.Langdon from
gp-bibliography.bib Revision:1.8276
- @Article{keren:2023:SciRep,
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author = "Liron Simon Keren and Alex Liberzon and
Teddy Lazebnik",
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title = "A computational framework for physics-informed
symbolic regression with straightforward integration of
domain knowledge",
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journal = "Scientific Reports",
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year = "2023",
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volume = "13",
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number = "1",
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pages = "Article number: 1249",
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month = "23 " # jan,
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keywords = "genetic algorithms, genetic programming, TPOT,
GPlearn",
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ISSN = "2045-2322",
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URL = "
https://www.nature.com/articles/s41598-023-28328-2.pdf",
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URL = "
https://rdcu.be/edJ8z",
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URL = "
https://arxiv.org/abs/2209.06257",
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DOI = "
doi:10.1038/s41598-023-28328-2",
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size = "17 pages",
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abstract = "Discovering a meaningful symbolic expression that
explains experimental data is a fundamental challenge
in many scientific fields. We present a novel,
open-source computational framework called
Scientist-Machine Equation Detector (SciMED), which
integrates scientific discipline wisdom in a
scientist-in-the-loop approach, with state-of-the-art
symbolic regression (SR) methods. SciMED combines a
wrapper selection method, that is based on a genetic
algorithm, with automatic machine learning and two
levels of SR methods. We test SciMED on five
configurations of a settling sphere, with and without
aerodynamic non-linear drag force, and with excessive
noise in the measurements. We show that SciMED is
sufficiently robust to discover the correct physically
meaningful symbolic expressions from the data, and
demonstrate how the integration of domain knowledge
enhances its performance. Our results indicate better
performance on these tasks than the state-of-the-art SR
software packages, even in cases where no knowledge is
integrated. Moreover, we demonstrate how SciMED can
alert the user about possible missing features, unlike
the majority of current SR systems.",
-
notes = "also known as \cite{Keren_2023}",
- }
Genetic Programming entries for
Liron Simon Keren
Alex Liberzon
Teddy Lazebnik
Citations