Searching for bias and correlations in a Bayesian way: example: SN Ia data

A range of Bayesian tools has become widely used in cosmological data treatment and parameter inference (see Kunz, Bassett & Hlozek (2007), Trotta (2008), Amendola, Marra & Quartin (2013)). With increasingly big datasets and higher precision, tools that enable us to further enhance the accur...

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Bibliographic Details
Main Authors: Heneka, Caroline (Author) , Amendola, Luca (Author)
Format: Article (Journal) Chapter/Article
Language:English
Published: 2014
In: Arxiv

Online Access:Verlag, kostenfrei, Volltext: http://arxiv.org/abs/1407.2531
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Author Notes:Caroline Heneka, Alexandre Posada, Valerio Marra and Luca Amendola
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Summary:A range of Bayesian tools has become widely used in cosmological data treatment and parameter inference (see Kunz, Bassett & Hlozek (2007), Trotta (2008), Amendola, Marra & Quartin (2013)). With increasingly big datasets and higher precision, tools that enable us to further enhance the accuracy of our measurements gain importance. Here we present an approach based on internal robustness, introduced in Amendola, Marra & Quartin (2013) and adopted in Heneka, Marra & Amendola (2014), to identify biased subsets of data and hidden correlation in a model independent way.
Item Description:Gesehen am 10.11.2017
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