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Auteurs principaux: Upadhyay, Ujjwal, Saini, Tarun Deep, Sethi, Shiv K.
Format: Preprint
Publié: 2026
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Accès en ligne:https://arxiv.org/abs/2603.06469
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author Upadhyay, Ujjwal
Saini, Tarun Deep
Sethi, Shiv K.
author_facet Upadhyay, Ujjwal
Saini, Tarun Deep
Sethi, Shiv K.
contents The peculiar motions of galaxies are powerful cosmological probes that trace the growth of structures and the distribution of matter in the universe, providing a means to investigate the nature of dark energy and test gravity on cosmological scales. However, their direct observation is extremely challenging, as it requires independent and precise distance measurements to galaxies. We present a Bayesian approach to estimate the radial component of peculiar velocities of galaxies hosting Type Ia supernovae (SNe Ia), relying solely on the background cosmological model and the precision of the SNe Ia data. Unlike other peculiar velocity estimators based on Hubble residuals, our method does not assume local linearity of the magnitude-redshift relation or a fixed cosmology, making it unbiased even for large peculiar velocities and self-consistently avoiding bias due to a wrong cosmology. We validate our method using simulated supernova data with the precision of current and upcoming surveys, and further compare it with the linearized estimator to test its efficacy. We show that our estimator has lower bias than the standard estimator and remains consistent even for larger values of $v_{\rm p}/cz$. We also present a Bayesian derivation for the linearized estimator generalized to include the supernova magnitude covariance.
format Preprint
id arxiv_https___arxiv_org_abs_2603_06469
institution arXiv
publishDate 2026
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spellingShingle Unbiased Bayesian Inference of Peculiar Motions of Galaxies from Type Ia Supernovae Observations
Upadhyay, Ujjwal
Saini, Tarun Deep
Sethi, Shiv K.
Cosmology and Nongalactic Astrophysics
The peculiar motions of galaxies are powerful cosmological probes that trace the growth of structures and the distribution of matter in the universe, providing a means to investigate the nature of dark energy and test gravity on cosmological scales. However, their direct observation is extremely challenging, as it requires independent and precise distance measurements to galaxies. We present a Bayesian approach to estimate the radial component of peculiar velocities of galaxies hosting Type Ia supernovae (SNe Ia), relying solely on the background cosmological model and the precision of the SNe Ia data. Unlike other peculiar velocity estimators based on Hubble residuals, our method does not assume local linearity of the magnitude-redshift relation or a fixed cosmology, making it unbiased even for large peculiar velocities and self-consistently avoiding bias due to a wrong cosmology. We validate our method using simulated supernova data with the precision of current and upcoming surveys, and further compare it with the linearized estimator to test its efficacy. We show that our estimator has lower bias than the standard estimator and remains consistent even for larger values of $v_{\rm p}/cz$. We also present a Bayesian derivation for the linearized estimator generalized to include the supernova magnitude covariance.
title Unbiased Bayesian Inference of Peculiar Motions of Galaxies from Type Ia Supernovae Observations
topic Cosmology and Nongalactic Astrophysics
url https://arxiv.org/abs/2603.06469