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Measurement of properties of B$^0_\mathrm{s}\toμ^+μ^-$ decays and search for B$^0\toμ^+μ^-$ with the CMS experiment (1910.12127v2)

Published 26 Oct 2019 in hep-ex

Abstract: Results are reported for the B$0_\mathrm{s}\to\mu+\mu-$ branching fraction and effective lifetime and from a search for the decay B$0\to\mu+\mu-$. The analysis uses a data sample of proton-proton collisions accumulated by the CMS experiment in 2011, 2012, and 2016, with center-of-mass energies (integrated luminosities) of 7 TeV (5 fb${-1}$), 8 TeV (20 fb${-1}$), and 13 TeV (36 fb${-1}$). The branching fractions are determined by measuring event yields relative to B$+\to$ J/$\psi$K$+$ decays (with J/$\psi\to\mu+\mu-$), which results in the reduction of many of the systematic uncertainties. The decay B$0_\mathrm{s}\to\mu+\mu-$ is observed with a significance of 5.6 standard deviations. The branching fraction is measured to be $\mathcal{B}$(B$0_\mathrm{s}\to\mu+\mu-$) = [2.9 $\pm$ 0.7 (exp) $\pm$ 0.2 (frag)] $\times$ 10${-9}$, where the first uncertainty combines the experimental statistical and systematic contributions, and the second is due to the uncertainty in the ratio of the B$0_\mathrm{s}$ and the B$+$ fragmentation functions. No significant excess is observed for the decay B$0\to\mu+\mu-$, and an upper limit of $\mathcal{B}$(B$0\to\mu+\mu-$) < 3.6 $\times$ 10${-10}$ is obtained at 95% confidence level. The B$0_\mathrm{s}\to\mu+\mu-$ effective lifetime is measured to be $\tau_{\mu+\mu-}$ = 1.70 ${+0.61}_{-0.44}$ ps. These results are consistent with standard model predictions.

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