The impact of priors and observables on parameter inferences in the Constrained MSSM
R. Trotta (Imperial/Oxford), F. Feroz (Cambridge), M.P. Hobson, (Cambridge), L. Roszkowski (Sheffield), R. Ruiz de Austri (Madrid)

TL;DR
This study evaluates how priors and constraints influence parameter inference in the Constrained MSSM using advanced Bayesian and likelihood methods, revealing current data limitations and promising detection prospects.
Contribution
It introduces a new efficient scanning algorithm and compares Bayesian and likelihood approaches, highlighting the impact of priors and constraints on parameter determination in the CMSSM.
Findings
Dark matter abundance dominates constraining power (~80%)
Direct detection prospects remain excellent with high cross sections
Current data are insufficient for priors-independent parameter determination
Abstract
We use a newly released version of the SuperBayeS code to analyze the impact of the choice of priors and the influence of various constraints on the statistical conclusions for the preferred values of the parameters of the Constrained MSSM. We assess the effect in a Bayesian framework and compare it with an alternative likelihood-based measure of a profile likelihood. We employ a new scanning algorithm (MultiNest) which increases the computational efficiency by a factor ~200 with respect to previously used techniques. We demonstrate that the currently available data are not yet sufficiently constraining to allow one to determine the preferred values of CMSSM parameters in a way that is completely independent of the choice of priors and statistical measures. While b->s gamma generally favors large m_0, this is in some contrast with the preference for low values of m_0 and m_1/2 that is…
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