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Computing Likelihood Functions for High-Energy Physics Experiments when Distributions are Defined by Simulators with Nuisance Parameters

When searching for new phenomena in high-energy physics, statistical analysis is complicated by the presence of nuisance parameters, representing uncertainty in the physics of interactions or in detector properties. Another complication, even with no nuisance parameters, is that the probability dist...

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Detalles Bibliográficos
Autor principal: Neal, Radford, M
Lenguaje:eng
Publicado: CERN 2008
Materias:
XX
Acceso en línea:https://dx.doi.org/10.5170/CERN-2008-001.111
http://cds.cern.ch/record/1099977
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author Neal, Radford, M
author_facet Neal, Radford, M
author_sort Neal, Radford, M
collection CERN
description When searching for new phenomena in high-energy physics, statistical analysis is complicated by the presence of nuisance parameters, representing uncertainty in the physics of interactions or in detector properties. Another complication, even with no nuisance parameters, is that the probability distributions of the models are speci ed only by simulation programs, with no way of evaluating their probability density functions. I advocate expressing the result of an experiment by means of the likelihood function, rather than by frequentist con dence intervals or p-values. A likelihood function for this problem is dif- cult to obtain, however, for both of the reasons given above. I discuss ways of circumventing these problems by reducing dimensionality using a classi er and employing simulations with multiple values for the nuisance parameters.
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institution Organización Europea para la Investigación Nuclear
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publishDate 2008
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spelling cern-10999772019-09-30T06:29:59Zdoi:10.5170/CERN-2008-001.111http://cds.cern.ch/record/1099977engNeal, Radford, MComputing Likelihood Functions for High-Energy Physics Experiments when Distributions are Defined by Simulators with Nuisance ParametersXXWhen searching for new phenomena in high-energy physics, statistical analysis is complicated by the presence of nuisance parameters, representing uncertainty in the physics of interactions or in detector properties. Another complication, even with no nuisance parameters, is that the probability distributions of the models are speci ed only by simulation programs, with no way of evaluating their probability density functions. I advocate expressing the result of an experiment by means of the likelihood function, rather than by frequentist con dence intervals or p-values. A likelihood function for this problem is dif- cult to obtain, however, for both of the reasons given above. I discuss ways of circumventing these problems by reducing dimensionality using a classi er and employing simulations with multiple values for the nuisance parameters.CERNoai:cds.cern.ch:10999772008
spellingShingle XX
Neal, Radford, M
Computing Likelihood Functions for High-Energy Physics Experiments when Distributions are Defined by Simulators with Nuisance Parameters
title Computing Likelihood Functions for High-Energy Physics Experiments when Distributions are Defined by Simulators with Nuisance Parameters
title_full Computing Likelihood Functions for High-Energy Physics Experiments when Distributions are Defined by Simulators with Nuisance Parameters
title_fullStr Computing Likelihood Functions for High-Energy Physics Experiments when Distributions are Defined by Simulators with Nuisance Parameters
title_full_unstemmed Computing Likelihood Functions for High-Energy Physics Experiments when Distributions are Defined by Simulators with Nuisance Parameters
title_short Computing Likelihood Functions for High-Energy Physics Experiments when Distributions are Defined by Simulators with Nuisance Parameters
title_sort computing likelihood functions for high-energy physics experiments when distributions are defined by simulators with nuisance parameters
topic XX
url https://dx.doi.org/10.5170/CERN-2008-001.111
http://cds.cern.ch/record/1099977
work_keys_str_mv AT nealradfordm computinglikelihoodfunctionsforhighenergyphysicsexperimentswhendistributionsaredefinedbysimulatorswithnuisanceparameters