The Dark Energy Survey Supernova Program: Cosmological biases from supernova photometric classification
M. Vincenzi, M. Sullivan, A. M\"oller, P. Armstrong, B. A. Bassett, D., Brout, D. Carollo, A. Carr, T. M. Davis, C. Frohmaier, L. Galbany, K., Glazebrook, O. Graur, L. Kelsey, R. Kessler, E. Kovacs, G. F. Lewis, C., Lidman, U. Malik, R. C. Nichol, B. Popovic, M. Sako, D. Scolnic

TL;DR
This paper assesses how contamination from non-Ia supernovae affects cosmological measurements in the Dark Energy Survey, demonstrating that with proper classification and bias correction, such contamination has minimal impact on dark energy parameter estimates.
Contribution
It introduces a rigorous analysis of contamination effects using state-of-the-art simulations and neural network classifiers, quantifying biases and uncertainties in dark energy constraints.
Findings
Contamination ranges from 0.8-3.5% depending on models.
Classification efficiency achieved is 97.7-99.5%.
Biases on dark energy parameters are below 0.009 in w_0 and 0.108 in w_a.
Abstract
Cosmological analyses of samples of photometrically-identified Type Ia supernovae (SNe Ia) depend on understanding the effects of 'contamination' from core-collapse and peculiar SN Ia events. We employ a rigorous analysis on state-of-the-art simulations of photometrically identified SN Ia samples and determine cosmological biases due to such 'non-Ia' contamination in the Dark Energy Survey (DES) 5-year SN sample. As part of the analysis, we test on our DES simulations the performance of SuperNNova, a photometric SN classifier based on recurrent neural networks. Depending on the choice of non-Ia SN models in both the simulated data sample and training sample, contamination ranges from 0.8-3.5 %, with the efficiency of the classification from 97.7-99.5 %. Using the Bayesian Estimation Applied to Multiple Species (BEAMS) framework and its extension 'BEAMS with Bias Correction' (BBC), we…
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Taxonomy
TopicsGamma-ray bursts and supernovae · Particle physics theoretical and experimental studies · Cosmology and Gravitation Theories
