Robust anomaly detection for particle physics using multi-background representation learning

Abhijith Gandrakota, Lily H. Zhang, Aahlad Puli, Kyle Cranmer, Jennifer Ngadiuba, Rajesh Ranganath, Nhan Tran

Research output: Contribution to journalArticlepeer-review

Abstract

Anomaly, or out-of-distribution, detection is a promising tool for aiding discoveries of new particles or processes in particle physics. In this work, we identify and address two overlooked opportunities to improve anomaly detection (AD) for high-energy physics. First, rather than train a generative model on the single most dominant background process, we build detection algorithms using representation learning from multiple background types, thus taking advantage of more information to improve estimation of what is relevant for detection. Second, we generalize decorrelation to the multi-background setting, thus directly enforcing a more complete definition of robustness for AD. We demonstrate the benefit of the proposed robust multi-background AD algorithms on a high-dimensional dataset of particle decays at the Large Hadron Collider.

Original languageEnglish (US)
Article number035082
JournalMachine Learning: Science and Technology
Volume5
Issue number3
DOIs
StatePublished - Sep 1 2024

Keywords

  • anomaly detection
  • large hadron collider
  • particle physics
  • representation learning
  • robust

ASJC Scopus subject areas

  • Software
  • Human-Computer Interaction
  • Artificial Intelligence

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