Extensive search for systematic bias in supernova Ia data

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Abstract

The use of advanced statistical analysis tools is crucial in order to improve cosmological parameter estimates via removal of systematic errors and identification of previously unaccounted for cosmological signals. Here, we demonstrate the application of a new fully Bayesian method, the internal robustness formalism, to scan for systematics and new signals in the recent supernova Ia Union compilations. Our analysis is tailored to maximize chances of detecting the anomalous subsets by means of a variety of sorting algorithms. We analyse supernova Ia distance moduli for effects depending on angular separation, redshift, surveys and hemispherical directions. The data have proven to be robust within 2σ, giving an independent confirmation of successful removal of systematics-contaminated supernovae. Hints of new cosmology, as for example the anisotropies reported by Planck, do not seem to be reflected in the supernova Ia data.

Author

Heneka, Caroline; Marra, Valerio; Amendola, Luca

Journal

Monthly Notices of the Royal Astronomical Society

Paper Publication Date

February 2014

Paper Type

Astrostatistics