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New results on the search for $B^0_s\rightarrow μ^+μ^-$ from LHCb (1302.1317v1)

Published 6 Feb 2013 in hep-ex and hep-ph

Abstract: A search for the rare decays $B0_s\rightarrow \mu+\mu-$ and $B0\rightarrow \mu+\mu-$ is performed with the LHCb experiment using 1.1\,fb${-1}$ of data collected at $\sqrt s=8$\,TeV$ and 1.0\,fb${-1}$ of data collected at $\sqrt s=7$\,TeV. An excess of $B0_s\rightarrow \mu+\mu-$ candidates with respect to the background expectations is observed with a statistical significance of 3.5 standard deviations. A branching fraction of ${\cal BR}(B0_s\rightarrow \mu+\mu-) =(3.2{+1.5}_{-1.2}) \times 10{-9}$ is measured with an unbinned maximum likelihood fit. The measured branching fraction is in agreement with the expectation from the Standard Model. The observed number of $B0\rightarrow \mu+\mu-$ candidates is consistent with the background expectation and an upper limit on the branching fraction of ${\cal BR}(B0\rightarrow \mu+\mu-) < 9.4\times10{-10}$ is obtained.

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