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High-dimensional model estimation and model selection

<!--HTML-->I will review concepts and algorithms from high-dimensional statistics for linear model estimation and model selection. I will particularly focus on the so-called p>>n setting where the number of variables p is much larger than the number of samples n. I will focus mostly on r...

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Autor principal: MUELLER, Christian
Lenguaje:eng
Publicado: 2015
Materias:
Acceso en línea:http://cds.cern.ch/record/2093519
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author MUELLER, Christian
author_facet MUELLER, Christian
author_sort MUELLER, Christian
collection CERN
description <!--HTML-->I will review concepts and algorithms from high-dimensional statistics for linear model estimation and model selection. I will particularly focus on the so-called p>>n setting where the number of variables p is much larger than the number of samples n. I will focus mostly on regularized statistical estimators that produce sparse models. Important examples include the LASSO and its matrix extension, the Graphical LASSO, and more recent non-convex methods such as the TREX. I will show the applicability of these estimators in a diverse range of scientific applications, such as sparse interaction graph recovery and high-dimensional classification and regression problems in genomics.
id cern-2093519
institution Organización Europea para la Investigación Nuclear
language eng
publishDate 2015
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spelling cern-20935192022-11-02T22:33:48Zhttp://cds.cern.ch/record/2093519engMUELLER, ChristianHigh-dimensional model estimation and model selectionData Science @ LHC 2015 WorkshopLPCC Workshops<!--HTML-->I will review concepts and algorithms from high-dimensional statistics for linear model estimation and model selection. I will particularly focus on the so-called p>>n setting where the number of variables p is much larger than the number of samples n. I will focus mostly on regularized statistical estimators that produce sparse models. Important examples include the LASSO and its matrix extension, the Graphical LASSO, and more recent non-convex methods such as the TREX. I will show the applicability of these estimators in a diverse range of scientific applications, such as sparse interaction graph recovery and high-dimensional classification and regression problems in genomics. oai:cds.cern.ch:20935192015
spellingShingle LPCC Workshops
MUELLER, Christian
High-dimensional model estimation and model selection
title High-dimensional model estimation and model selection
title_full High-dimensional model estimation and model selection
title_fullStr High-dimensional model estimation and model selection
title_full_unstemmed High-dimensional model estimation and model selection
title_short High-dimensional model estimation and model selection
title_sort high-dimensional model estimation and model selection
topic LPCC Workshops
url http://cds.cern.ch/record/2093519
work_keys_str_mv AT muellerchristian highdimensionalmodelestimationandmodelselection
AT muellerchristian datasciencelhc2015workshop