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Statistical Learning with Sparsity

The Lasso and Generalizations

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  • 367pages
  • 13 heures de lecture

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Focusing on the challenges posed by big data, this book explores how the sparsity assumption can help extract meaningful patterns from extensive datasets, even when the number of features exceeds observations. It delves into various techniques, including the lasso for linear regression, generalized penalties, and numerical optimization methods. Additionally, it covers statistical inference for lasso models, sparse multivariate analysis, graphical models, and compressed sensing, providing a comprehensive guide to modern data analysis techniques.

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Statistical Learning with Sparsity, Martin Wainwright, Robert Tibshirani, Trevor Hastie

Langue
Année de publication
2015
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Titre
Statistical Learning with Sparsity
Sous-titre
The Lasso and Generalizations
Langue
Anglais
Publié
2015
Format
rigide
Pages
367
ISBN13
9781498712163
Séries
Évaluation
4,25 sur 5
Description
Focusing on the challenges posed by big data, this book explores how the sparsity assumption can help extract meaningful patterns from extensive datasets, even when the number of features exceeds observations. It delves into various techniques, including the lasso for linear regression, generalized penalties, and numerical optimization methods. Additionally, it covers statistical inference for lasso models, sparse multivariate analysis, graphical models, and compressed sensing, providing a comprehensive guide to modern data analysis techniques.