Application of machine learning techniques at BESIII experiment
classification
⚛️ physics.ins-det
hep-ex
keywords
besiiilearningmachinetechniquesapplicationbeenbepciicgem
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BESIII is a currently running tau-charm factory with the largest samples of on threshold charm meson pairs, directly produced charmonia and some other unique datasets at BEPCII collider. Machine learning techniques have been employed to improve the performance of BESIII software. The studies for reweighing MC, particle identification and cluster reconstruction for the CGEM (Cylindrical Gas Electron Multiplier) inner tracker are presented.
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