Grammar evolution and symbolic regression for astrometric centering of Hubble Space Telescope images
Created by W.Langdon from
gp-bibliography.bib Revision:1.7970
- @InProceedings{Sarmiento:2024:GI,
-
author = "Ricardo Sarmiento and Marina {de la Cruz} and
Alfonso Ortega and Terrence M. Girard and
Dana I. Casetti-Dinescu and Alejandro Cervantes and
Roberto Baena-Galle",
-
title = "Grammar evolution and symbolic regression for
astrometric centering of {Hubble} Space Telescope
images",
-
booktitle = "13th International Workshop on Genetic Improvement
@ICSE 2024",
-
year = "2024",
-
editor = "Gabin An and Aymeric Blot and Vesna Nowack and
Oliver Krauss and Justyna Petke",
-
pages = "13--20",
-
address = "Lisbon",
-
month = "16 " # apr,
-
publisher = "ACM",
-
keywords = "genetic algorithms, genetic programming, Genetic
Improvement, Grammatical evolution, symbolic
regression, astrometry, Wide Field Planetary Camera 2,
WFPC2, Hubble Space Telescope, HST, point spread
functions, PSF",
-
isbn13 = "979-8-4007-0573-1/24/04",
-
URL = "http://gpbib.cs.ucl.ac.uk/gi2024/ICSE_24_GIGE_astronomy_cr_vldtd.pdf",
-
DOI = "doi:10.1145/3643692.3648264",
-
slides_url = "http://gpbib.cs.ucl.ac.uk/gi2024/gi_2024_slides/GEastronomy_GIICSE24.pdf",
-
video_url = "http://gpbib.cs.ucl.ac.uk/gi2024/gi_2024_slides/gi_icse24_aop.mp4",
-
video_url = "https://www.youtube.com/watch?v=VXm5vFumWeE&list=PLI8fiFpB7BoIRqJuY80XwmH-DFT_71y2S&index=3",
-
size = "8 pages",
-
abstract = "Symbolic regression, in general, and genetic models,
in particular, are promising approaches to mathematical
modeling in astrometry where it is not always clear
which is the fittest analytic expression depending on
the problem under consideration. Several attempts and
increasing research efforts are being made in this
direction mainly from the Genetic Programming (GP)
viewpoint. Our proposal is, as far as we know, the
first one to apply Grammatical Evolution (GE) in this
domain. GE (and further GE extensions) aim to
outperform GP limitations by incorporating formal
language stools to guarantee the correctness (both
syntactic and semantic) of the generated expressions.
The current contribution is a first proof to check the
viability of GE on astrometric real datasets. Its
success in finding adequate parameters for predefined
families of functions in star centering (Gaussian and
Moffat PSFs) with simple and naive GE experiments
supports our hypothesis on taking advantage of the
expressive power of GE to tackle astrometry scenarios
of interest and hence greatly improve current
astrometric software thanks to specific genetic
approaches.",
-
notes = "GI @ ICSE 2024, part of \cite{an:2024:GI}",
- }
Genetic Programming entries for
Ricardo Sarmiento
Marina de la Cruz Echeandia
Alfonso Ortega de la Puente
Terrence M Girard
Dana I Casetti-Dinescu
Alejandro Cervantes
Roberto Baena-Galle
Citations