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Simple and statistically sound recommendations for analysing physical theories.

Authors :
AbdusSalam SS
Agocs FJ
Allanach BC
Athron P
Balázs C
Bagnaschi E
Bechtle P
Buchmueller O
Beniwal A
Bhom J
Bloor S
Bringmann T
Buckley A
Butter A
Camargo-Molina JE
Chrzaszcz M
Conrad J
Cornell JM
Danninger M
de Blas J
De Roeck A
Desch K
Dolan M
Dreiner H
Eberhardt O
Ellis J
Farmer B
Fedele M
Flächer H
Fowlie A
Gonzalo TE
Grace P
Hamer M
Handley W
Harz J
Heinemeyer S
Hoof S
Hotinli S
Jackson P
Kahlhoefer F
Kowalska K
Krämer M
Kvellestad A
Martinez ML
Mahmoudi F
Santos DM
Martinez GD
Mishima S
Olive K
Paul A
Prim MT
Porod W
Raklev A
Renk JJ
Rogan C
Roszkowski L
Ruiz de Austri R
Sakurai K
Scaffidi A
Scott P
Sessolo EM
Stefaniak T
Stöcker P
Su W
Trojanowski S
Trotta R
Sming Tsai YL
Van den Abeele J
Valli M
Vincent AC
Weiglein G
White M
Wienemann P
Wu L
Zhang Y
Source :
Reports on progress in physics. Physical Society (Great Britain) [Rep Prog Phys] 2022 Apr 29; Vol. 85 (5). Date of Electronic Publication: 2022 Apr 29.
Publication Year :
2022

Abstract

Physical theories that depend on many parameters or are tested against data from many different experiments pose unique challenges to statistical inference. Many models in particle physics, astrophysics and cosmology fall into one or both of these categories. These issues are often sidestepped with statistically unsound ad hoc methods, involving intersection of parameter intervals estimated by multiple experiments, and random or grid sampling of model parameters. Whilst these methods are easy to apply, they exhibit pathologies even in low-dimensional parameter spaces, and quickly become problematic to use and interpret in higher dimensions. In this article we give clear guidance for going beyond these procedures, suggesting where possible simple methods for performing statistically sound inference, and recommendations of readily-available software tools and standards that can assist in doing so. Our aim is to provide any physicists lacking comprehensive statistical training with recommendations for reaching correct scientific conclusions, with only a modest increase in analysis burden. Our examples can be reproduced with the code publicly available at Zenodo.<br /> (© 2022 IOP Publishing Ltd.)

Details

Language :
English
ISSN :
1361-6633
Volume :
85
Issue :
5
Database :
MEDLINE
Journal :
Reports on progress in physics. Physical Society (Great Britain)
Publication Type :
Academic Journal
Accession number :
35522172
Full Text :
https://doi.org/10.1088/1361-6633/ac60ac