The Dark Energy Survey Supernova Program: Cosmological Biases from Host Galaxy Mismatch of Type Ia Supernovae
H. Qu, M. Sako, M. Vincenzi, C. Sanchez, D. Brout, R. Kessler, R., Chen, T. Davis, L. Galbany, L. Kelsey, J. Lee, C. Lidman, B. Popovic, B., Rose, D. Scolnic, M. Smith, M. Sullivan, P. Wiseman, T. M. C. Abbott, M., Aguena, O. Alves, D. Bacon, E. Bertin, D. Brooks, D. L. Burke

TL;DR
This study assesses how host galaxy mismatches in supernova data affect cosmological measurements, finding the bias is small but emphasizing the need for improved host-matching methods.
Contribution
It quantifies the impact of host galaxy mismatch biases on dark energy parameters using simulations based on the DES-SN5YR sample.
Findings
Host galaxy mismatch rate is 1.7%.
Bias in dark energy parameter Dw is less than 0.0032.
Bias is an order of magnitude smaller than current uncertainties.
Abstract
Redshift measurements, primarily obtained from host galaxies, are essential for inferring cosmological parameters from type Ia supernovae (SNe Ia). Matching SNe to host galaxies using images is non-trivial, resulting in a subset of SNe with mismatched hosts and thus incorrect redshifts. We evaluate the host galaxy mismatch rate and resulting biases on cosmological parameters from simulations modeled after the Dark Energy Survey 5-Year (DES-SN5YR) photometric sample. For both DES-SN5YR data and simulations, we employ the directional light radius method for host galaxy matching. In our SN Ia simulations, we find that 1.7% of SNe are matched to the wrong host galaxy, with redshift difference between the true and matched host of up to 0.6. Using our analysis pipeline, we determine the shift in the dark energy equation of state parameter (Dw) due to including SNe with incorrect host galaxy…
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