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Inclusive Flavour Tagging at LHCb

J. E. Blank

Abstract

A new algorithm based on a deep neural network, DeepSets, for tagging the production flavour of neutral $B^0$ and $B^0_s$ mesons in proton-proton collisions is presented. Exploiting a comprehensive set of tracks associated with the hadronization process, the algorithm is calibrated on data collected by the LHCb experiment at a centre-of-mass energy of $13$ TeV. This inclusive approach enhances the flavour tagging performance beyond the established same-side and opposite-side tagging methods. The observed gains in tagging power of $35\%$ for $B^0$ mesons and $20\%$ for $B_s^0$ mesons relative to the combined performance of the existing LHCb flavour-tagging algorithms offer significant benefits for precision measurements of $C\!P$ violation and mixing in the neutral $B$ meson systems.

Inclusive Flavour Tagging at LHCb

Abstract

A new algorithm based on a deep neural network, DeepSets, for tagging the production flavour of neutral and mesons in proton-proton collisions is presented. Exploiting a comprehensive set of tracks associated with the hadronization process, the algorithm is calibrated on data collected by the LHCb experiment at a centre-of-mass energy of TeV. This inclusive approach enhances the flavour tagging performance beyond the established same-side and opposite-side tagging methods. The observed gains in tagging power of for mesons and for mesons relative to the combined performance of the existing LHCb flavour-tagging algorithms offer significant benefits for precision measurements of violation and mixing in the neutral meson systems.
Paper Structure (7 sections, 7 equations, 4 tables)