Constraining cosmology with machine learning and galaxy clustering: the CAMELS-SAM suite
Lucia A. Perez, Shy Genel, Francisco Villaescusa-Navarro, Rachel S., Somerville, Austen Gabrielpillai, Daniel Angl\'es-Alc\'azar, Benjamin D., Wandelt, L. Y. Aaron Yung

TL;DR
This paper introduces CAMELS-SAM, a large suite of simulated galaxy data used to train neural networks for constraining cosmological parameters and understanding galaxy formation, demonstrating the effectiveness of simple clustering statistics.
Contribution
The paper presents CAMELS-SAM, a comprehensive simulation suite combining dark matter and semi-analytic galaxy formation models for machine learning applications in cosmology.
Findings
Neural networks can constrain cosmological parameters with 3-8% error.
Clustering statistics help marginalize over astrophysics.
Galaxy selections influence the precision of constraints.
Abstract
As the next generation of large galaxy surveys come online, it is becoming increasingly important to develop and understand the machine learning tools that analyze big astronomical data. Neural networks are powerful and capable of probing deep patterns in data, but must be trained carefully on large and representative data sets. We developed and generated a new `hump' of the Cosmology and Astrophysics with MachinE Learning Simulations (CAMELS) project: CAMELS-SAM, encompassing one thousand dark-matter only simulations of (100 cMpc) with different cosmological parameters ( and ) and run through the Santa Cruz semi-analytic model for galaxy formation over a broad range of astrophysical parameters. As a proof-of-concept for the power of this vast suite of simulated galaxies in a large volume and broad parameter space, we probe the power of simple clustering…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research
