Goodness of fit by Neyman-Pearson testing

Author:

Grosso Gaia123456,Letizia Marco7ORCID,Pierini Maurizio1ORCID,Wulzer Andrea8

Affiliation:

1. European Organization for Nuclear Research

2. INFN Padova Division

3. University of Padua

4. Harvard University

5. Massachusetts Institute of Technology

6. The NSF AI Institute for Artificial Intelligence and Fundamental Interactions

7. University of Genoa

8. Institute for High Energy Physics

Abstract

The Neyman-Pearson strategy for hypothesis testing can be employed for goodness of fit if the alternative hypothesis is selected from data by exploring a rich parametrised family of models, while controlling the impact of statistical fluctuations. The New Physics Learning Machine (NPLM) methodology has been developed as a concrete implementation of this idea, to target the detection of new physical effects in the context of high energy physics collider experiments. In this paper we conduct a comparison of this approach to goodness of fit with others, in particular with classifier-based strategies that share strong similarities with NPLM. From our comparison, NPLM emerges as the more sensitive test to small departures of the data from the expected distribution and not biased towards detecting specific types of anomalies. These features make it suited for agnostic searches for new physics at collider experiments. Its deployment in other scientific and industrial scenarios should be investigated.

Funder

Agencia Estatal de Investigación

European Research Council

Publisher

Stichting SciPost

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