Identification of tau leptons using a convolutional neural network with domain adaptation
CMS Collaboration

TL;DR
This paper introduces DeepTau v2.5, a CNN-based tau lepton identification algorithm with domain adaptation, improving accuracy and reducing misidentification rates in CMS LHC data at 13 and 13.6 TeV.
Contribution
The paper presents a novel tau identification algorithm with domain adaptation and refined training, significantly enhancing performance over previous versions.
Findings
30-50% reduction in jet misidentification rates
Effective calibration of simulation to real data
Validated performance on 2018 and 2022 CMS data
Abstract
A tau lepton identification algorithm, DeepTau, based on convolutional neural network techniques, has been developed in the CMS experiment to discriminate reconstructed hadronic decays of tau leptons () from quark or gluon jets and electrons and muons that are misreconstructed as candidates. The latest version of this algorithm, v2.5, includes domain adaptation by backpropagation, a technique that reduces discrepancies between collision data and simulation in the region with the highest purity of genuine candidates. Additionally, a refined training workflow improves classification performance with respect to the previous version of the algorithm, with a reduction of 3050% in the probability for quark and gluon jets to be misidentified as candidates for given reconstruction and identification efficiencies. This…
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Taxonomy
TopicsParticle physics theoretical and experimental studies · Particle Detector Development and Performance · High-Energy Particle Collisions Research
