Authors
Renée Hlozek, Martin Kunz, Bruce Bassett, Mat Smith, James Newling, Melvin Varughese, Rick Kessler, Joe Bernstein, Heather Campbell, Ben Dilday, Bridget Falck, Joshua Frieman, Steve Kulhmann, Hubert Lampeitl, John Marriner, Robert C Nichol, Adam G Riess, Masao Sako, Donald P Schneider
Publication date
2011/11/22
Journal
The Astrophysical Journal
Volume
752
Issue
2
Description
Supernova (SN) cosmology without spectroscopic confirmation is an exciting new frontier, which we address here with the Bayesian Estimation Applied to Multiple Species (BEAMS) algorithm and the full three years of data from the Sloan Digital Sky Survey II Supernova Survey (SDSS-II SN). BEAMS is a Bayesian framework for using data from multiple species in statistical inference when one has the probability that each data point belongs to a given species, corresponding in this context to different types of SNe with their probabilities derived from their multi-band light curves. We run the BEAMS algorithm on both Gaussian and more realistic SNANA simulations with of order 10 4 SNe, testing the algorithm against various pitfalls one might expect in the new and somewhat uncharted territory of photometric SN cosmology. We compare the performance of BEAMS to that of both mock spectroscopic surveys and …
Total citations
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Scholar articles
R Hlozek, M Kunz, B Bassett, M Smith, J Newling… - The Astrophysical Journal, 2012