16–20 Jun 2025
THotel, Cagliari, Sardinia, Italy
Europe/Rome timezone

Machine Learning-Driven Anomaly Detection in Dijet Events with ATLAS

Not scheduled
20m
THotel, Cagliari, Sardinia, Italy

THotel, Cagliari, Sardinia, Italy

Via dei Giudicati, 66, 09131 Cagliari (CA), Italy
Poster + Flashtalk Patterns & Anomalies

Speaker

Tobias Golling (University of Geneva)

Description

This contribution discusses an anomaly detection search for narrow-width resonances beyond the Standard Model that decay into a pair of jets. Using 139 fb−1 of proton-proton collision data at sqrt(s) = 13 TeV, recorded from 2015 to 2018 with the ATLAS detector at the Large Hadron Collider, we aim to identify new physics without relying on a specific signal model. The analysis employs two machine learning strategies to estimate the background in different signal regions, with weakly supervised classifiers trained to differentiate this background estimate from actual data. We focus on high transverse momentum jets reconstructed as large-radius jets, using their mass and substructure as classifier inputs. After a classifier-based selection, we analyze the invariant mass distribution of the jet pairs for potential local excesses. Our model-independent results indicate no significant local excesses and we inject a representative set of signal models into the data to evaluate the sensitivity of our methods. This contribution discusses the used methods and latest results and highlights the potential of machine learning in enhancing the search for new physics in fundamental particle interactions.

AI keywords weakly supervised, anomaly detection, normalizing flow

Primary authors

Benjamin Nachman (Lawrence Berkeley National Laboratory) Dr Dennis Noll (LBNL) Dr Johnny Raine (University of Geneva) Mr Kees Benkendorfer (Harvard) Dr Knut Zoch (Harvard) Mr Luc Le Pottier (LBNL) Dr Sam Klein (University of Geneva) Dr Sascha Diefenbacher (LBNL) Tobias Golling (University of Geneva)

Presentation materials

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