Bayesian analysis of f(T) gravity using fσ8 data
Abstract
We use observational data from Supernovae (SNIa) Pantheon sample, from direct Hubble constant measurements with cosmic chronometers (CC), from the Cosmic Microwave Background shift parameter CMBshift, and from redshift space distortion (fσ8) measurements, in order to constrain f(T) gravity. We do not follow the common γ parameterization within the semi-analytical approximation of the growth rate, in order to avoid model-dependent uncertainties. Up to our knowledge this is the first time that f(T) gravity is analyzed within a Bayesian framework, and with background and perturbation behaviour considered jointly. We show that all three examined f(T) models are able to describe adequately the fσ8 data. Furthermore, applying the Akaike, Bayesian and Deviance Information Criteria, we conclude that all considered models are statistically equivalent, however the most efficient candidate is the exponential model, which additionally presents a small deviation from paradigm.
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