The pMSSM10 after LHC Run 1
K.J. de Vries, E.A. Bagnaschi, O. Buchmueller, R. Cavanaugh, M., Citron, A. De Roeck, M.J. Dolan, J.R. Ellis, H. Flaecher, S. Heinemeyer, G., Isidori, S. Malik, J. Marrouche, D. Martinez Santos, K.A. Olive, K. Sakurai,, G. Weiglein

TL;DR
This paper conducts a comprehensive frequentist analysis of the pMSSM10 parameter space, integrating LHC search results, Higgs data, and dark matter constraints, revealing its potential to explain (g-2)_mu and predicting lighter SUSY particles than other models.
Contribution
It provides the first detailed global fit of the pMSSM10 with extensive LHC data, highlighting its ability to accommodate (g-2)_mu and offering predictions for SUSY particle masses.
Findings
pMSSM10 can explain (g-2)_mu, unlike other models.
SUSY particles may be lighter in pMSSM10 than in CMSSM, NUHM1, NUHM2.
The fit yields a chi^2 probability of 30.8%.
Abstract
We present a frequentist analysis of the parameter space of the pMSSM10, in which the following 10 soft SUSY-breaking parameters are specified independently at the mean scalar top mass scale Msusy = Sqrt[M_stop1 M_stop2]: the gaugino masses M_{1,2,3}, the 1st-and 2nd-generation squark masses M_squ1 = M_squ2, the third-generation squark mass M_squ3, a common slepton mass M_slep and a common trilinear mixing parameter A, the Higgs mixing parameter mu, the pseudoscalar Higgs mass M_A and tan beta. We use the MultiNest sampling algorithm with 1.2 x 10^9 points to sample the pMSSM10 parameter space. A dedicated study shows that the sensitivities to strongly-interacting SUSY masses of ATLAS and CMS searches for jets, leptons + MET signals depend only weakly on many of the other pMSSM10 parameters. With the aid of the Atom and Scorpion codes, we also implement the LHC searches for…
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