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  The Dark Energy Survey supernova program: cosmological biases from supernova photometric classification

Vincenzi, M., Sullivan, M., Möller, A., Armstrong, P., Bassett, B. A., Brout, D., et al. (2022). The Dark Energy Survey supernova program: cosmological biases from supernova photometric classification. Monthly Notices of the Royal Astronomical Society, 518(1), 1106-1127. doi:10.1093/mnras/stac1404.

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Vincenzi, M., Author
Sullivan, M., Author
Möller, A., Author
Armstrong, P., Author
Bassett, B. A., Author
Brout, D., Author
Carollo, D., Author
Carr, A., Author
Davis, T. M., Author
Frohmaier, C., Author
Galbany, L., Author
Glazebrook, K., Author
Graur, O., Author
Kelsey, L., Author
Kessler, R., Author
Kovacs, E., Author
Lewis, G. F., Author
Lidman, C., Author
Malik, U., Author
Nichol, R. C., Author
Popovic, B., AuthorSako, M., AuthorScolnic, D., AuthorSmith, M., AuthorTaylor, G., AuthorTucker, B. E., AuthorWiseman, P., AuthorAguena, M., AuthorAllam, S., AuthorAnnis, J., AuthorAsorey, J., AuthorBacon, D., AuthorBertin, E., AuthorBrooks, D., AuthorBurke, D. L., AuthorRosell, A. Carnero, AuthorCarretero, J., AuthorCastander, F. J., AuthorCostanzi, M., Authorda Costa, L. N., AuthorPereira, M. E. S., AuthorVicente, J. De, AuthorDesai, S., AuthorDiehl, H. T., AuthorDoel, P., AuthorEverett, S., AuthorFerrero, I., AuthorFlaugher, B., AuthorFosalba, P., AuthorFrieman, J., AuthorGarcía-Bellido, J., AuthorGerdes, D. W., AuthorGruen, D., AuthorGutierrez, G., AuthorHinton, S. R., AuthorHollowood, D. L., AuthorHonscheid, K., AuthorJames, D. J., AuthorKuehn, K., AuthorKuropatkin, N., AuthorLahav, O., AuthorLi, T. S., AuthorLima, M., AuthorMaia, M. A. G., AuthorMarshall, J. L., AuthorMiquel, R., AuthorMorgan, R., AuthorOgando, R. L. C., AuthorPalmese, A., AuthorPaz-Chinchón, F., AuthorPieres, A., AuthorMalagón, A. A. Plazas, AuthorReil, K., AuthorRoodman, A., AuthorSanchez, E., AuthorSchubnell, M., AuthorSerrano, S., AuthorSevilla-Noarbe, I., AuthorSuchyta, E., AuthorTarle, G., AuthorTo, C., AuthorVarga, T. N.1, Author           Weller, J.1, Author           Wilkinson, R.D., Author more..
Affiliations:
1Optical and Interpretative Astronomy, MPI for Extraterrestrial Physics, Max Planck Society, ou_159895              

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 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 using the photometric classifier SuperNNova on state-of-the-art simulations of SN samples to determine cosmological biases due to such ‘non-Ia’ contamination in the Dark Energy Survey (DES) 5-yr SN sample. Depending on the non-Ia SN models used in the SuperNNova training and testing samples, contamination ranges from 0.8 to 3.5 per cent, with a classification efficiency of 97.7–99.5 per cent. Using the Bayesian Estimation Applied to Multiple Species (BEAMS) framework and its extension BBC (‘BEAMS with Bias Correction’), we produce a redshift-binned Hubble diagram marginalized over contamination and corrected for selection effects, and use it to constrain the dark energy equation-of-state, w. Assuming a flat universe with Gaussian ΩM prior of 0.311 ± 0.010, we show that biases on w are <0.008 when using SuperNNova, with systematic uncertainties associated with contamination around 10 per cent of the statistical uncertainty on w for the DES-SN sample. An alternative approach of discarding contaminants using outlier rejection techniques (e.g. Chauvenet’s criterion) in place of SuperNNova leads to biases on w that are larger but still modest (0.015–0.03). Finally, we measure biases due to contamination on w0 and wa (assuming a flat universe), and find these to be <0.009 in w0 and <0.108 in wa, 5 to 10 times smaller than the statistical uncertainties for the DES-SN sample.

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 Dates: 2022-06-03
 Publication Status: Published online
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 Identifiers: DOI: 10.1093/mnras/stac1404
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Title: Monthly Notices of the Royal Astronomical Society
Source Genre: Journal
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Pages: - Volume / Issue: 518 (1) Sequence Number: - Start / End Page: 1106 - 1127 Identifier: -