(Exhaustive) symbolic regression and model selection by minimum description length
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- @Article{Desmond:2026:RSTA,
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author = "Harry Desmond",
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title = "(Exhaustive) symbolic regression and model selection
by minimum description length",
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journal = "Philosophical Transactions of the Royal Society A:
Mathematical, Physical and Engineering Sciences",
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year = "2026",
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volume = "384",
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number = "2317",
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pages = "20240584",
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month = "9 " # apr,
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keywords = "genetic algorithms, genetic programming, symbolic
regression, minimum description length, machine
learning, algorithmic information theory, artificial
intelligence, AI, astrophysics, computational physics,
cosmology",
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ISSN = "1364-503X",
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URL = "
https://doi.org/10.1098/rsta.2024.0584",
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URL = "
https://royalsocietypublishing.org/rsta/article-pdf/doi/10.1098/rsta.2024.0584/6131786/rsta.2024.0584.pdf",
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DOI = "
10.1098/rsta.2024.0584",
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size = "15 pages",
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abstract = "Symbolic regression (SR) is the machine learning (ML)
method for learning functions from data. After a brief
overview of the SR landscape, I will describe the two
main challenges that traditional algorithms face: they
have an unknown (and probably significant) probability
of failing to find any given good function, and they
suffer from ambiguity and poorly justified assumptions
in their function-selection procedure. To address
these, I propose an exhaustive search and model
selection by the minimum description length (MDL)
principle, which allows accuracy and complexity to be
directly traded off by measuring each in units of
information. I showcase the resulting publicly
available Exhaustive Symbolic Regression (ESR)
algorithm on three open problems in astrophysics: the
expansion history of the universe, the effective
behaviour of gravity in galaxies and the potential of
the inflaton field. In each case, the algorithm
identifies many functions superior to the literature
standards. This general-purpose methodology should find
widespread utility in science and beyond.",
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notes = "part of the discussion meeting issue Symbolic
regression in the physical sciences
\cite{Bartlett:2026:RSTAintro}.
Institute of Cosmology and Gravitation, University of
Portsmouth, Portsmouth, UK",
- }
Genetic Programming entries for
Harry Desmond
Citations