ZTF SN Ia DR2: Improved SN Ia colors through expanded dimensionality with SALT3+
W. D. Kenworthy, A. Goobar, D. O. Jones, J. Johansson, S. Thorp, R. Kessler, U. Burgaz, S. Dhawan, G. Dimitriadis, L. Galbany, M. Ginolin, Y.-L. Kim, K. Maguire, T. E. M\"uller-Bravo, P. Nugent, J. Nordin, B. Popovic, P. J. Pessi, M. Rigault, P. Rosnet, J. Sollerman

TL;DR
This paper introduces SALT3+ by adding an extra parameter to the SALT model, capturing additional supernova variability, which could improve color measurements and cosmological precision, though with limited impact on current results.
Contribution
The paper develops SALT3+, an extended supernova light-curve model with an additional parameter, enhancing the understanding of supernova variability beyond existing models.
Findings
Identified phase-dependent color variations correlated with spectral differences.
Neglecting the new parameter causes a small systematic trend in Hubble residuals.
No bias found in current cosmological measurements due to the new parameter.
Abstract
Type Ia supernovae (SNe Ia) are a key probe in modern cosmology, as they can be used to measure luminosity distances at gigaparsec scales. Models of their light-curves are used to project heterogeneous observed data onto a common basis for analysis. The SALT model currently used for SN Ia cosmology describes SNe as having two sources of variability, accounted for by a color parameter c, and a "stretch parameter" x1. We extend the model to include an additional parameter we label x2, to investigate the cosmological impact of currently unaddressed light-curve variability. We construct a new SALT model, which we dub "SALT3+". This model was trained by an improved version of the SALTshaker code, using training data combining a selection of the second data release of cosmological SNe Ia from the Zwicky Transient Facility and the existing SALT3 training compilation. We find additional,…
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