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Main Authors: Rau, Markus Michael, Kéruzoré, Florian, Ramachandra, Nesar, Bleem, Lindsey
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2406.11950
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author Rau, Markus Michael
Kéruzoré, Florian
Ramachandra, Nesar
Bleem, Lindsey
author_facet Rau, Markus Michael
Kéruzoré, Florian
Ramachandra, Nesar
Bleem, Lindsey
contents Galaxy clusters are one of the most powerful probes to study extensions of General Relativity and the Standard Cosmological Model. Upcoming surveys like the Vera Rubin Observatory's Legacy Survey of Space and Time are expected to revolutionise the field, by enabling the analysis of cluster samples of unprecedented size and quality. To reach this era of high-precision cluster cosmology, the mitigation of sources of systematic error is crucial. A particularly important challenge is bias in cluster mass measurements induced by inaccurate photometric redshift estimates of source galaxies. This work proposes a method to optimise the source sample selection in cluster weak lensing analyses drawn from wide-field survey lensing catalogs to reduce the bias on reconstructed cluster masses. We use a combinatorial optimisation scheme and methods from variational inference to select galaxies in latent space to produce a probabilistic galaxy source sample catalog for highly accurate cluster mass estimation. We show that our method reduces the critical surface mass density $Σ_{\rm crit}$ modelling bias on the 60-70% level, while maintaining up to 90% of galaxies. We highlight that our methodology has applications beyond cluster mass estimation as an approach to jointly combine galaxy selection and model inference under sources of systematics.
format Preprint
id arxiv_https___arxiv_org_abs_2406_11950
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Reducing Model Error Using Optimised Galaxy Selection: Weak Lensing Cluster Mass Estimation
Rau, Markus Michael
Kéruzoré, Florian
Ramachandra, Nesar
Bleem, Lindsey
Cosmology and Nongalactic Astrophysics
Galaxy clusters are one of the most powerful probes to study extensions of General Relativity and the Standard Cosmological Model. Upcoming surveys like the Vera Rubin Observatory's Legacy Survey of Space and Time are expected to revolutionise the field, by enabling the analysis of cluster samples of unprecedented size and quality. To reach this era of high-precision cluster cosmology, the mitigation of sources of systematic error is crucial. A particularly important challenge is bias in cluster mass measurements induced by inaccurate photometric redshift estimates of source galaxies. This work proposes a method to optimise the source sample selection in cluster weak lensing analyses drawn from wide-field survey lensing catalogs to reduce the bias on reconstructed cluster masses. We use a combinatorial optimisation scheme and methods from variational inference to select galaxies in latent space to produce a probabilistic galaxy source sample catalog for highly accurate cluster mass estimation. We show that our method reduces the critical surface mass density $Σ_{\rm crit}$ modelling bias on the 60-70% level, while maintaining up to 90% of galaxies. We highlight that our methodology has applications beyond cluster mass estimation as an approach to jointly combine galaxy selection and model inference under sources of systematics.
title Reducing Model Error Using Optimised Galaxy Selection: Weak Lensing Cluster Mass Estimation
topic Cosmology and Nongalactic Astrophysics
url https://arxiv.org/abs/2406.11950