Using Machine Learning To Select High-Quality Measurements

JOURNAL OF INSTRUMENTATION(2021)

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Abstract
We describe the use of machine learning algorithms to select high-quality measurements for the Mu2e experiment. This technique is important for experiments with backgrounds that arise due to measurement errors. The algorithms use multiple pieces of ancillary information that are sensitive to measurement quality to separate high-quality and low-quality measurements.
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Key words
Analysis and statistical methods, Particle tracking detectors, Performance of High Energy Physics Detectors
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