Internal robustness of growth rate data
Author
Abstract
We perform an internal robustness analysis (iR) to a compilation of the most recent fσ8ðzÞ data, using
the framework of Ref. [1]. The method analyzes combinations of subsets in the data set in a Bayesian
model comparison way, potentially finding outliers, subsets of data affected by systematics or new physics.
In order to validate our analysis and assess its sensitivity we performed several cross-checks, for example
by removing some of the data or by adding artificially contaminated points, while we also generated mock
data sets in order to estimate confidence regions of the iR. Applying this methodology, we found no
anomalous behavior in the fσ8ðzÞ data set, thus validating its internal robustness.
Indexation
Artículo de publicación SCOPUS
Identifier
URI: https://repositorio.uchile.cl/handle/2250/169572
DOI: 10.1103/PhysRevD.98.083543
ISSN: 24700029
24700010
Quote Item
Physical Review D, Volumen 98, Issue 8, 2018
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