• Open Access

Learning new physics from a machine

Raffaele Tito D’Agnolo and Andrea Wulzer
Phys. Rev. D 99, 015014 – Published 8 January 2019

Abstract

We propose using neural networks to detect data departures from a given reference model, with no prior bias on the nature of the new physics responsible for the discrepancy. The virtues of neural networks as unbiased function approximants make them particularly suited for this task. An algorithm that implements this idea is constructed, as a straightforward application of the likelihood-ratio hypothesis test. The algorithm compares observations with an auxiliary set of reference-distributed events, possibly obtained with a Monte Carlo event generator. It returns a p value, which measures the compatibility of the reference model with the data. It also identifies the most discrepant phase-space region of the data set, to be selected for further investigation. The most interesting potential applications are model-independent new physics searches, although our approach could also be used to compare the theoretical predictions of different Monte Carlo event generators, or for data validation algorithms. In this work we study the performance of our algorithm on a few simple examples. The results confirm the model independence of the approach, namely that it displays good sensitivity to a variety of putative signals. Furthermore, we show that the reach does not depend much on whether a favorable signal region is selected based on prior expectations. We identify directions for improvement towards applications to real experimental data sets.

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  • Received 19 October 2018

DOI:https://doi.org/10.1103/PhysRevD.99.015014

Published by the American Physical Society under the terms of the Creative Commons Attribution 4.0 International license. Further distribution of this work must maintain attribution to the author(s) and the published article’s title, journal citation, and DOI. Funded by SCOAP3.

Published by the American Physical Society

Physics Subject Headings (PhySH)

Particles & Fields

Authors & Affiliations

Raffaele Tito D’Agnolo1 and Andrea Wulzer2,3,4

  • 1SLAC National Accelerator Laboratory, 2575 Sand Hill Road, Menlo Park, California 94025, USA
  • 2Theoretical Physics Department, CERN, 1211 Geneva , Switzerland
  • 3Theoretical Particle Physics Laboratory (LPTP), Institute of Physics, EPFL, 1511 Lausanne, Switzerland
  • 4Dipartimento di Fisica e Astronomia, Università di Padova and INFN, Sezione di Padova, via Marzolo 8, I-35131 Padova, Italy

Article Text

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Vol. 99, Iss. 1 — 1 January 2019

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