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Partial Least Squares Regression And Related Dimension Reduction Methods R Dennis Cook Liliana Forzani

  • SKU: BELL-58731986
Partial Least Squares Regression And Related Dimension Reduction Methods R Dennis Cook Liliana Forzani
$ 31.00 $ 45.00 (-31%)

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Partial Least Squares Regression And Related Dimension Reduction Methods R Dennis Cook Liliana Forzani instant download after payment.

Publisher: Chapman and Hall/CRC
File Extension: PDF
File size: 26.31 MB
Pages: 448
Author: R. Dennis Cook & Liliana Forzani
ISBN: 9781032773186, 1032773189
Language: English
Year: 2024

Product desciption

Partial Least Squares Regression And Related Dimension Reduction Methods R Dennis Cook Liliana Forzani by R. Dennis Cook & Liliana Forzani 9781032773186, 1032773189 instant download after payment.

Partial least squares (PLS) regression is, at its historical core, a black-box algorithmic method for dimension reduction and prediction based on an underlying linear relationship between a possibly vector-valued response and a number of predictors. Through envelopes, much more has been learned about PLS regression, resulting in a mass of information that allows an envelope bridge that takes PLS regression from a black-box algorithm to a core statistical paradigm based on objective function optimization and, more generally, connects the applied sciences and statistics in the context of PLS. This book focuses on developing this bridge. It also covers uses of PLS outside of linear regression, including discriminant analysis, non-linear regression, generalized linear models and dimension reduction generally. Key Features: • Showcases the first serviceable method for studying high-dimensional regressions. • Provides necessary background on PLS and its origin. • R and Python programs are available for nearly all methods discussed in the book.

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