Opzioni
Search for New Phenomena in Two-Body Invariant Mass Distributions Using Unsupervised Machine Learning for Anomaly Detection at √s = 13 TeV with the ATLAS Detector
GONELLA, Laura
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ATLAS Collaboration
2024
Periodico
PHYSICAL REVIEW LETTERS
Abstract
Searches for new resonances are performed using an unsupervised anomaly-detection technique. Events with at least one electron or muon are selected from 140 fb−1 of pp collisions at √s 1⁄4 13 TeV recorded by ATLAS at the Large Hadron Collider. The approach involves training an autoencoder on data, and subsequently defining anomalous regions based on the reconstruction loss of the decoder. Studies focus on nine invariant mass spectra that contain pairs of objects consisting of one light jet or b jet and either one lepton (e; μ), photon, or second light jet or b jet in the anomalous regions. No significant deviations from the background hypotheses are observed. Limits on contributions from generic Gaussian signals with various widths of the resonance mass are obtained for nine invariant masses in the anomalous regions.
Diritti
open access
license:creative commons
license uri:http://creativecommons.org/licenses/by/4.0/
Soggetti
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Anomaly detection
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Machine learning
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Tellurium compound
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Anomalous region
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Anomaly detection
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ATLAS detector
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Auto encoder
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Invariant mass distri...
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Large Hadron Collider...
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Large-hadron collider...
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Region-based
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Unsupervised anomaly ...
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Unsupervised machine ...
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article
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human
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outlier detection
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unsupervised machine ...
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Mass spectrometry