Automatizing the search for mass resonances using BumpNet
The search for resonant mass bumps in invariant-mass distributions remains a cornerstone strategy for uncovering Beyond the Standard Model (BSM) physics at the Large Hadron Collider (LHC). Traditional methods often rely on predefined functional forms and exhaustive computational and human resources,...
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Zusammenfassung: | The search for resonant mass bumps in invariant-mass distributions remains a
cornerstone strategy for uncovering Beyond the Standard Model (BSM) physics at
the Large Hadron Collider (LHC). Traditional methods often rely on predefined
functional forms and exhaustive computational and human resources, limiting the
scope of tested final states and selections. This work presents BumpNet, a
machine learning-based approach leveraging advanced neural network
architectures to generalize and enhance the Data-Directed Paradigm (DDP) for
resonance searches. Trained on a diverse dataset of smoothly-falling analytical
functions and realistic simulated data, BumpNet efficiently predicts
statistical significance distributions across varying histogram configurations,
including those derived from LHC-like conditions. The network's performance is
validated against idealized likelihood ratio-based tests, showing minimal bias
and strong sensitivity in detecting mass bumps across a range of scenarios.
Additionally, BumpNet's application to realistic BSM scenarios highlights its
capability to identify subtle signals while managing the look-elsewhere effect.
These results underscore BumpNet's potential to expand the reach of resonance
searches, paving the way for more comprehensive explorations of LHC data in
future analyses. |
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DOI: | 10.48550/arxiv.2501.05603 |