Statistical Learning with Sparsity The Lasso and Generalizations

Cover of Statistical Learning with Sparsity The Lasso and Generalizations by Trevor Hastie
Publisher: Taylor & Francis
Year: 2015
Language: en
Edition: 1
Pages: 367
ISBN-13: 9781498712163
Dimensions:
Height: 9.2098241 Inches
Length: 6.1401452 Inches
Weight: 1.5873282864 Pounds
Width: 1.06 Inches
Dewey Decimal: 519.5
Editorial overview Touché

Statistical Learning with Sparsity: The Lasso and Generalizations by Trevor Hastie, published by Taylor & Francis on May 7, 2015, is a comprehensive resource that explores methods for managing high-dimensional data. This edition spans 367 pages and is presented in English. The book focuses on sparse statistical models, which feature a limited number of nonzero parameters, making them easier to estimate and interpret compared to dense models.

Readers will find a detailed examination of the lasso for linear regression, including a coordinate descent algorithm for its computation. The text discusses the application of ( l_1 ) penalties to generalized linear models and support vector machines, as well as generalized penalties like the elastic net and group lasso. Additionally, it covers numerical optimization methods and statistical inference techniques for fitted lasso models, such as bootstrap and Bayesian methods. The book also delves into matrix decomposition, sparse multivariate analysis, and compressed sensing, providing valuable insights for data analysts, computer scientists, and theorists interested in sparse statistical modeling.


Official synopsis Publisher

Discover New Methods for Dealing with High-Dimensional Data

A sparse statistical model has only a small number of nonzero parameters or weights; therefore, it is much easier to estimate and interpret than a dense model. Statistical Learning with Sparsity: The Lasso and Generalizations presents methods that exploit sparsity to help recover the underlying signal in a set of data.

Top experts in this rapidly evolving field, the authors describe the lasso for linear regression and a simple coordinate descent algorithm for its computation. They discuss the application of l1 penalties to generalized linear models and support vector machines, cover generalized penalties such as the elastic net and group lasso, and review numerical methods for optimization. They also present statistical inference methods for fitted (lasso) models, including the bootstrap, Bayesian methods, and recently developed approaches. In addition, the book examines matrix decomposition, sparse multivariate analysis, graphical models, and compressed sensing. It concludes with a survey of theoretical results for the lasso.

In this age of big data, the number of features measured on a person or object can be large and might be larger than the number of observations. This book shows how the sparsity assumption allows us to tackle these problems and extract useful and reproducible patterns from big datasets. Data analysts, computer scientists, and theorists will appreciate this thorough and up-to-date treatment of sparse statistical modeling.

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This page includes the available description and bibliographic details for “Statistical Learning with Sparsity The Lasso and Generalizations” by Trevor Hastie. Synopsis preview: Discover New Methods for Dealing with High-Dimensional Data A sparse statistical model has only a small number of nonzero parameters or weights; therefore, it is much easier to estimate and interpret than a dense model.…
Who is the author of “Statistical Learning with Sparsity The Lasso and Generalizations”?
“Statistical Learning with Sparsity The Lasso and Generalizations” is credited to Trevor Hastie.
When was “Statistical Learning with Sparsity The Lasso and Generalizations” published?
Publisher: Taylor & Francis. Year: 2015.
What is the ISBN for “Statistical Learning with Sparsity The Lasso and Generalizations”?
ISBN-13: 9781498712163.
What are the book details (language, pages, edition)?
Language: en. Pages: 367. Edition: 1.

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