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Bayesian reasoning in HEP: principles and applications
Bayesian statistics associate the idea of probability-the measure of the degree of belief that an event will occur - to the lack of knowledge, as it is commonly perceived intuitively. The Bayes' theorem becomes then the basic tool to evaluate the probability, combining (a priori) judgement and...
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Lenguaje: | eng eng |
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CERN
1998
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Acceso en línea: | http://cds.cern.ch/record/362377 |
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author | D'Agostini, Giulio |
author_facet | D'Agostini, Giulio |
author_sort | D'Agostini, Giulio |
collection | CERN |
description | Bayesian statistics associate the idea of probability-the measure of the degree of belief that an event will occur - to the lack of knowledge, as it is commonly perceived intuitively. The Bayes' theorem becomes then the basic tool to evaluate the probability, combining (a priori) judgement and experimental information. This approach allows to treat in a logically consistent way all kinds of uncertainty. The lessons will deal with uncertainty arising from measurements: inference on the value of a physics quantity from experimental observations (examining in depth the cases of observations following Gaussian, binomialand poisson distributions); combinations of results; upper/lower limits and their combination; hypothesis tests versus probabilities of the hypotheses; systematic errors and the correlations they induce; simplified methods for routine applications (by-passing the explicit use of Bayes' theorem); type A and type B uncertainties (according to BIPM/ISO recovery of many standard methods, but deeping the transparency of the Bayesian reasoning; multidimensional unfolding. |
id | cern-362377 |
institution | Organización Europea para la Investigación Nuclear |
language | eng eng |
publishDate | 1998 |
publisher | CERN |
record_format | invenio |
spelling | cern-3623772022-11-03T08:17:40Zhttp://cds.cern.ch/record/362377engengD'Agostini, GiulioBayesian reasoning in HEP: principles and applicationsDetectors and Experimental TechniquesBayesian statistics associate the idea of probability-the measure of the degree of belief that an event will occur - to the lack of knowledge, as it is commonly perceived intuitively. The Bayes' theorem becomes then the basic tool to evaluate the probability, combining (a priori) judgement and experimental information. This approach allows to treat in a logically consistent way all kinds of uncertainty. The lessons will deal with uncertainty arising from measurements: inference on the value of a physics quantity from experimental observations (examining in depth the cases of observations following Gaussian, binomialand poisson distributions); combinations of results; upper/lower limits and their combination; hypothesis tests versus probabilities of the hypotheses; systematic errors and the correlations they induce; simplified methods for routine applications (by-passing the explicit use of Bayes' theorem); type A and type B uncertainties (according to BIPM/ISO recovery of many standard methods, but deeping the transparency of the Bayesian reasoning; multidimensional unfolding.The lectures on Bayesian statisticsCERNoai:cds.cern.ch:3623771998 |
spellingShingle | Detectors and Experimental Techniques D'Agostini, Giulio Bayesian reasoning in HEP: principles and applications |
title | Bayesian reasoning in HEP: principles and applications |
title_full | Bayesian reasoning in HEP: principles and applications |
title_fullStr | Bayesian reasoning in HEP: principles and applications |
title_full_unstemmed | Bayesian reasoning in HEP: principles and applications |
title_short | Bayesian reasoning in HEP: principles and applications |
title_sort | bayesian reasoning in hep: principles and applications |
topic | Detectors and Experimental Techniques |
url | http://cds.cern.ch/record/362377 |
work_keys_str_mv | AT dagostinigiulio bayesianreasoninginhepprinciplesandapplications |