Bayesian correction of H(z) data uncertainties

Abstract

We compile 41 H(z) data from literature and use them to constrain O and flat parameters. We show that the available H(z) suffers from uncertainties overestimation and propose a Bayesian method to reduce them. As a result of this method, using H(z) only, we find, in the context of O, H0=69.52.5\,km\,s-1Mpc-1, m=0.2420.036 and =0.680.14. In the context of flat model, we have found H0=70.41.2\,km\,s-1Mpc-1 and m=0.2560.014. This corresponds to an uncertainty reduction of up to 30\% when compared to the uncorrected analysis in both cases.

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