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Subtracting and Fitting Histograms using Profile Likelihood

It is known that many interesting signals expected at LHC are of unknown shape and strongly contaminated by background events. These signals will be dif cult to detect during the rst years of LHC operation due to the initial low luminosity. In this work, one presents a method of subtracting histogra...

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Detalles Bibliográficos
Autores principales: D'Almeida, F M L, Nepomuceno, A A
Lenguaje:eng
Publicado: CERN 2008
Materias:
XX
Acceso en línea:https://dx.doi.org/10.5170/CERN-2008-001.155
http://cds.cern.ch/record/1099983
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author D'Almeida, F M L
Nepomuceno, A A
author_facet D'Almeida, F M L
Nepomuceno, A A
author_sort D'Almeida, F M L
collection CERN
description It is known that many interesting signals expected at LHC are of unknown shape and strongly contaminated by background events. These signals will be dif cult to detect during the rst years of LHC operation due to the initial low luminosity. In this work, one presents a method of subtracting histograms based on the pro le likelihood function when the background is previously estimated by Monte Carlo events and one has low statistics. Estimators for the signal in each bin of the histogram difference are calculated so as limits for the signals with 68.3% of Con dence Level in a low statistics case when one has a exponential background and a Gaussian signal. The method can also be used to t histograms when the signal shape is known. Our results show a good performance and avoid the problem of negative values when subtracting histograms.
id cern-1099983
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2008
publisher CERN
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spelling cern-10999832019-09-30T06:29:59Zdoi:10.5170/CERN-2008-001.155http://cds.cern.ch/record/1099983engD'Almeida, F M LNepomuceno, A ASubtracting and Fitting Histograms using Profile LikelihoodXXIt is known that many interesting signals expected at LHC are of unknown shape and strongly contaminated by background events. These signals will be dif cult to detect during the rst years of LHC operation due to the initial low luminosity. In this work, one presents a method of subtracting histograms based on the pro le likelihood function when the background is previously estimated by Monte Carlo events and one has low statistics. Estimators for the signal in each bin of the histogram difference are calculated so as limits for the signals with 68.3% of Con dence Level in a low statistics case when one has a exponential background and a Gaussian signal. The method can also be used to t histograms when the signal shape is known. Our results show a good performance and avoid the problem of negative values when subtracting histograms.CERNoai:cds.cern.ch:10999832008
spellingShingle XX
D'Almeida, F M L
Nepomuceno, A A
Subtracting and Fitting Histograms using Profile Likelihood
title Subtracting and Fitting Histograms using Profile Likelihood
title_full Subtracting and Fitting Histograms using Profile Likelihood
title_fullStr Subtracting and Fitting Histograms using Profile Likelihood
title_full_unstemmed Subtracting and Fitting Histograms using Profile Likelihood
title_short Subtracting and Fitting Histograms using Profile Likelihood
title_sort subtracting and fitting histograms using profile likelihood
topic XX
url https://dx.doi.org/10.5170/CERN-2008-001.155
http://cds.cern.ch/record/1099983
work_keys_str_mv AT dalmeidafml subtractingandfittinghistogramsusingprofilelikelihood
AT nepomucenoaa subtractingandfittinghistogramsusingprofilelikelihood