Machine Learning Algorithms for b-Jet Tagging at the ATLAS Experiment
Journal of Physics Conference Series2018Vol. 1085, pp. 042031–042031
Citations Over TimeTop 11% of 2018 papers
Abstract
The separation of b-quark initiated jets from those coming from lighter quark flavors (b-tagging) is a fundamental tool for the ATLAS physics program at the CERN Large Hadron Collider.The most powerful b-tagging algorithms combine information from low-level taggers, exploiting reconstructed track and vertex information, into machine learning classifiers.The potential of modern deep learning techniques is explored using simulated events, and compared to that achievable from more traditional classifiers such as boosted decision trees.
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