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Bayesian Data Analysis (lecture 2)

<!--HTML-->Bayesian analysis offers a powerful tool for data analysis, as it is able to make probabilistic statements about unknown parameters. This lecture will focus especially on the bayesian viewpoint of data analysis and explore various important methods. In the first part of the lecture...

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Detalles Bibliográficos
Autor principal: Graf, Christian
Lenguaje:eng
Publicado: 2018
Materias:
Acceso en línea:http://cds.cern.ch/record/2307606
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author Graf, Christian
author_facet Graf, Christian
author_sort Graf, Christian
collection CERN
description <!--HTML-->Bayesian analysis offers a powerful tool for data analysis, as it is able to make probabilistic statements about unknown parameters. This lecture will focus especially on the bayesian viewpoint of data analysis and explore various important methods. In the first part of the lecture, we will deepen our understanding of the fundamentals of bayesian reasoning. We will review basic techniques on how to construct confidence intervals and how to fit a model within the bayesian framework but we will also go into more detail and discuss for example the role of the prior. The second part of the lecture will cover further examples and applications that heavily rely on the bayesian approach, as well as some computational tools needed to perform a bayesian analysis.
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spelling cern-23076062022-11-02T22:32:28Zhttp://cds.cern.ch/record/2307606engGraf, ChristianBayesian Data Analysis (lecture 2)Inverted CERN School of Computing 2018Inverted CSC<!--HTML-->Bayesian analysis offers a powerful tool for data analysis, as it is able to make probabilistic statements about unknown parameters. This lecture will focus especially on the bayesian viewpoint of data analysis and explore various important methods. In the first part of the lecture, we will deepen our understanding of the fundamentals of bayesian reasoning. We will review basic techniques on how to construct confidence intervals and how to fit a model within the bayesian framework but we will also go into more detail and discuss for example the role of the prior. The second part of the lecture will cover further examples and applications that heavily rely on the bayesian approach, as well as some computational tools needed to perform a bayesian analysis.oai:cds.cern.ch:23076062018
spellingShingle Inverted CSC
Graf, Christian
Bayesian Data Analysis (lecture 2)
title Bayesian Data Analysis (lecture 2)
title_full Bayesian Data Analysis (lecture 2)
title_fullStr Bayesian Data Analysis (lecture 2)
title_full_unstemmed Bayesian Data Analysis (lecture 2)
title_short Bayesian Data Analysis (lecture 2)
title_sort bayesian data analysis (lecture 2)
topic Inverted CSC
url http://cds.cern.ch/record/2307606
work_keys_str_mv AT grafchristian bayesiandataanalysislecture2
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